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Deep Learning for Opinion Mining and Topic Classification of Course Reviews (2304.03394v2)

Published 6 Apr 2023 in cs.CL and cs.LG

Abstract: Student opinions for a course are important to educators and administrators, regardless of the type of the course or the institution. Reading and manually analyzing open-ended feedback becomes infeasible for massive volumes of comments at institution level or online forums. In this paper, we collected and pre-processed a large number of course reviews publicly available online. We applied machine learning techniques with the goal to gain insight into student sentiments and topics. Specifically, we utilized current NLP techniques, such as word embeddings and deep neural networks, and state-of-the-art BERT (Bidirectional Encoder Representations from Transformers), RoBERTa (Robustly optimized BERT approach) and XLNet (Generalized Auto-regression Pre-training). We performed extensive experimentation to compare these techniques versus traditional approaches. This comparative study demonstrates how to apply modern machine learning approaches for sentiment polarity extraction and topic-based classification utilizing course feedback. For sentiment polarity, the top model was RoBERTa with 95.5% accuracy and 84.7% F1-macro, while for topic classification, an SVM (Support Vector Machine) was the top classifier with 79.8% accuracy and 80.6% F1-macro. We also provided an in-depth exploration of the effect of certain hyperparameters on the model performance and discussed our observations. These findings can be used by institutions and course providers as a guide for analyzing their own course feedback using NLP models towards self-evaluation and improvement.

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References (49)
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In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Blei DM, Ng AY, Jordan MI (2003) Latent dirichlet allocation. Journal of machine Learning research 3(Jan):993–1022 Chen et al (2014) Chen X, Vorvoreanu M, Madhavan K (2014) Mining social media data for understanding students’ learning experiences. IEEE Transactions on learning technologies 7(3):246–259 Clavié and Gal (2019) Clavié B, Gal K (2019) Edubert: Pretrained deep language models for learning analytics. arXiv preprint arXiv:191200690 Cortes and Vapnik (1995) Cortes C, Vapnik V (1995) Support-vector networks. Machine learning 20(3):273–297 Dessì et al (2019) Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Chen X, Vorvoreanu M, Madhavan K (2014) Mining social media data for understanding students’ learning experiences. IEEE Transactions on learning technologies 7(3):246–259 Clavié and Gal (2019) Clavié B, Gal K (2019) Edubert: Pretrained deep language models for learning analytics. arXiv preprint arXiv:191200690 Cortes and Vapnik (1995) Cortes C, Vapnik V (1995) Support-vector networks. Machine learning 20(3):273–297 Dessì et al (2019) Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Clavié B, Gal K (2019) Edubert: Pretrained deep language models for learning analytics. arXiv preprint arXiv:191200690 Cortes and Vapnik (1995) Cortes C, Vapnik V (1995) Support-vector networks. Machine learning 20(3):273–297 Dessì et al (2019) Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Cortes C, Vapnik V (1995) Support-vector networks. Machine learning 20(3):273–297 Dessì et al (2019) Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  2. Blei DM, Ng AY, Jordan MI (2003) Latent dirichlet allocation. Journal of machine Learning research 3(Jan):993–1022 Chen et al (2014) Chen X, Vorvoreanu M, Madhavan K (2014) Mining social media data for understanding students’ learning experiences. IEEE Transactions on learning technologies 7(3):246–259 Clavié and Gal (2019) Clavié B, Gal K (2019) Edubert: Pretrained deep language models for learning analytics. arXiv preprint arXiv:191200690 Cortes and Vapnik (1995) Cortes C, Vapnik V (1995) Support-vector networks. Machine learning 20(3):273–297 Dessì et al (2019) Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Chen X, Vorvoreanu M, Madhavan K (2014) Mining social media data for understanding students’ learning experiences. IEEE Transactions on learning technologies 7(3):246–259 Clavié and Gal (2019) Clavié B, Gal K (2019) Edubert: Pretrained deep language models for learning analytics. arXiv preprint arXiv:191200690 Cortes and Vapnik (1995) Cortes C, Vapnik V (1995) Support-vector networks. Machine learning 20(3):273–297 Dessì et al (2019) Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Clavié B, Gal K (2019) Edubert: Pretrained deep language models for learning analytics. arXiv preprint arXiv:191200690 Cortes and Vapnik (1995) Cortes C, Vapnik V (1995) Support-vector networks. Machine learning 20(3):273–297 Dessì et al (2019) Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Cortes C, Vapnik V (1995) Support-vector networks. Machine learning 20(3):273–297 Dessì et al (2019) Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  3. Chen X, Vorvoreanu M, Madhavan K (2014) Mining social media data for understanding students’ learning experiences. IEEE Transactions on learning technologies 7(3):246–259 Clavié and Gal (2019) Clavié B, Gal K (2019) Edubert: Pretrained deep language models for learning analytics. arXiv preprint arXiv:191200690 Cortes and Vapnik (1995) Cortes C, Vapnik V (1995) Support-vector networks. Machine learning 20(3):273–297 Dessì et al (2019) Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Clavié B, Gal K (2019) Edubert: Pretrained deep language models for learning analytics. arXiv preprint arXiv:191200690 Cortes and Vapnik (1995) Cortes C, Vapnik V (1995) Support-vector networks. Machine learning 20(3):273–297 Dessì et al (2019) Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Cortes C, Vapnik V (1995) Support-vector networks. Machine learning 20(3):273–297 Dessì et al (2019) Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. 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Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. 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IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. 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In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Cortes C, Vapnik V (1995) Support-vector networks. Machine learning 20(3):273–297 Dessì et al (2019) Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  6. Dessì D, Dragoni M, Fenu G, et al (2019) Evaluating neural word embeddings created from online course reviews for sentiment analysis. In: Proceedings of the 34th ACM/SIGAPP symposium on applied computing, pp 2124–2127 Devlin et al (2019) Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. 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Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  7. Devlin J, Chang MW, Lee K, et al (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Conference of the NACL: Human Language Technologies, pp 4171–4186 Doleck et al (2020) Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  8. Doleck T, Lemay DJ, Basnet RB, et al (2020) Predictive analytics in education: a comparison of deep learning frameworks. Education and Information Technologies 25(3):1951–1963 Dolianiti et al (2018) Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dolianiti F, Iakovakis D, Dias S, et al (2018) Sentiment analysis techniques and applications in education: A survey. In: International Conference on Technology and Innovation in Learning, Teaching and Education, Springer Dutt et al (2017) Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  10. Dutt A, Ismail MA, Herawan T (2017) A systematic review on educational data mining. IEEE Access 5:15,991–16,005 Estrada et al (2020) Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Estrada MLB, Cabada RZ, Bustillos RO, et al (2020) Opinion mining and emotion recognition applied to learning environments. Expert Systems with Applications 150:113,265 Gottipati et al (2017) Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. 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Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. 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In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  12. Gottipati S, Shankararaman V, Gan S (2017) A conceptual framework for analyzing students’ feedback. In: 2017 IEEE Frontiers in Education Conference (FIE), pp 1–8 Grönberg et al (2021) Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  13. Grönberg N, Knutas A, Hynninen T, et al (2021) Palaute: An online text mining tool for analyzing written student course feedback. IEEE Access Hochreiter and Schmidhuber (1997) Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  14. Hochreiter S, Schmidhuber J (1997) Long short-term memory. Neural computation 9(8):1735–1780 Hujala et al (2020) Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hujala M, Knutas A, Hynninen T, et al (2020) Improving the quality of teaching by utilising written student feedback: A streamlined process. Computers & Education 157:103,965 Hutto and Gilbert (2014) Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Hutto C, Gilbert E (2014) Vader: A parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the International AAAI Conference on Web and Social Media Kastrati et al (2020) Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. 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IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. 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Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Imran AS, Kurti A (2020) Weakly supervised framework for aspect-based sentiment analysis on students’ reviews of moocs. IEEE Access 8:106,799–106,810 Kastrati et al (2021) Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. 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Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. 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Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kastrati Z, Dalipi F, Imran AS, et al (2021) Sentiment analysis of students’ feedback with nlp and deep learning: A systematic mapping study. Applied Sciences 11(9):3986 Kim (2014) Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Kim Y (2014) Convolutional neural networks for sentence classification. arXiv preprint arXiv:14085882 Koufakou et al (2016) Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. 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Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  20. Koufakou A, Gosselin J, Guo D (2016) Using data mining to extract knowledge from student evaluation comments in undergraduate courses. In: IEEE International Joint Conference on Neural Networks, pp 3138–3142 Lalata et al (2019) Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Lalata JP, Gerardo B, Medina R (2019) A sentiment analysis model for faculty comment evaluation using ensemble machine learning algorithms. In: 2019 International Conference on Big Data Engineering, pp 68–73 Liu et al (2019) Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Liu Y, Ott M, Goyal N, et al (2019) Roberta: A robustly optimized bert pretraining approach. arXiv preprint arXiv:190711692 Mikolov et al (2013) Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Mikolov T, Sutskever I, Chen K, et al (2013) Distributed representations of words and phrases and their compositionality. In: Advances in neural information processing systems, pp 3111–3119 Minaee et al (2021) Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Minaee S, Kalchbrenner N, Cambria E, et al (2021) Deep learning–based text classification: A comprehensive review. ACM Computing Surveys (CSUR) 54(3):1–40 Nguyen et al (2018) Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. 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Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. 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ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. 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Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  25. Nguyen V, Van Nguyen K, Nguyen NLT (2018) Variants of long short-term memory for sentiment analysis on vietnamese students’ feedback corpus. In: IEEE 10th Int’l Conf Knowledge and Systems Engineering, pp 306–311 Onan (2020) Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Onan A (2020) Mining opinions from instructor evaluation reviews: A deep learning approach. Computer Applications in Engineering Education 28(1):117–138 Ortigosa et al (2014) Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  27. Ortigosa A, Martín J, Carro R (2014) Sentiment analysis in facebook and its application to e-learning. Computers in human behavior 31:527–541 Peña-Ayala (2014) Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  28. Peña-Ayala A (2014) Educational data mining: A survey and a data mining-based analysis of recent works. Expert systems with applications 41(4):1432–1462 Ren et al (2022) Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  29. Ren P, Yang L, Luo F (2022) Automatic scoring of student feedback for teaching evaluation based on aspect-level sentiment analysis. Education and Information Technologies pp 1–18 Rogers et al (2020) Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rogers A, Kovaleva O, Rumshisky A (2020) A primer in BERTology: What we know about how BERT works. Transactions of the Association for Computational Linguistics 8:842–866 Rybinski and Kopciuszewska (2020) Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Rybinski K, Kopciuszewska E (2020) Will artificial intelligence revolutionise the student evaluation of teaching? a big data study of 1.6 million student reviews. Assessment & Evaluation in Higher Education pp 1–13 Sanh et al (2019) Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sanh V, Debut L, Chaumond J, et al (2019) Distilbert, a distilled version of bert: smaller, faster, cheaper and lighter. arXiv preprint arXiv:191001108 Santos et al (2018) Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  33. Santos CL, Rita P, Guerreiro J (2018) Improving international attractiveness of higher education institutions based on text mining and sentiment analysis. International Journal of Educational Management 32 Sindhu et al (2019) Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sindhu I, Daudpota SM, Badar K, et al (2019) Aspect-based opinion mining on student’s feedback for faculty teaching performance evaluation. IEEE Access 7:108,729–108,741 Sliusarenko et al (2013) Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sliusarenko T, Clemmensen LKH, Ersbøll BK (2013) Text mining in students’ course evaluations: Relationships between open-ended comments and quantitative scores. In: 5th International Conference on Computer Supported Education, pp 564–573 Sorour et al (2015) Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  36. Sorour S, Goda K, Mine T (2015) Correlation of topic model and student grades using comment data mining. In: Proceedings of the 46th ACM Technical Symposium on Computer Science Education, pp 441–446 Spencer and Schmelkin (2002) Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  37. Spencer KJ, Schmelkin LP (2002) Student perspectives on teaching and its evaluation. Assessment & Evaluation in Higher Education 27(5):397–409 Srinivas and Rajendran (2019) Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  38. Srinivas S, Rajendran S (2019) Topic-based knowledge mining of online student reviews for strategic planning in universities. Computers & Industrial Engineering 128:974–984 Tan et al (2005) Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tan P, Steinbach M, Kumar V (2005) Introduction to data mining. 1st. Boston: Pearson Addison Wesley. xxi Tian et al (2014) Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tian F, Gao P, Li L, et al (2014) Recognizing and regulating e-learners’ emotions based on interactive chinese texts in e-learning systems. Knowledge-Based Systems 55:148–164 Truong et al (2020) Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. 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In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. 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IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. 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ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Truong TL, Le HL, Le-Dang TP (2020) Sentiment analysis implementing bert-based pre-trained language model for vietnamese. In: IEEE NAFOSTED Conference on Information and Computer Science, pp 362–367 Tseng et al (2018) Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. 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Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Tseng CW, Chou JJ, Tsai YC (2018) Text mining analysis of teaching evaluation questionnaires for the selection of outstanding teaching faculty members. IEEE Access 6:72,870–72,879 Van Nguyen et al (2018) Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Van Nguyen K, Nguyen VD, Nguyen PX, et al (2018) Uit-vsfc: Vietnamese students’ feedback corpus for sentiment analysis. In: IEEE 10th International Conf Knowledge and Systems Engineering, pp 19–24 Wang et al (2020) Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  44. Wang W, Zhuang H, Zhou M, et al (2020) What makes a star teacher? a hierarchical bert model for evaluating teacher’s performance in online education. arXiv preprint arXiv:201201633 Yang et al (2019) Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  45. Yang Z, Dai Z, Yang Y, et al (2019) Xlnet: Generalized autoregressive pretraining for language understanding. Advances in neural information processing systems 32 Yu et al (2018) Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  46. Yu LC, Lee CW, Pan H, et al (2018) Improving early prediction of academic failure using sentiment analysis on self-evaluated comments. Journal of Computer Assisted Learning 34(4):358–365 Zampieri et al (2020) Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zampieri M, Nakov P, Rosenthal S, et al (2020) Semeval-2020 task 12: Multilingual offensive language identification in social media (offenseval 2020). In: Proceedings of the 14th Workshop on Semantic Evaluation. ACL, pp 1425–1447 Zhang et al (2015) Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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  48. Zhang X, Zhao J, LeCun Y (2015) Character-level convolutional networks for text classification. In: Advances in neural information processing systems, pp 649–657 Zhou and Ye (2020) Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13 Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
  49. Zhou J, Ye J (2020) Sentiment analysis in education research: a review of journal publications. Interactive Learning Environments 0(0):1–13
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  1. Anna Koufakou (3 papers)
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