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Modeling Student Performance in Game-Based Learning Environments

Published 23 Sep 2023 in cs.LG and cs.AI | (2309.13429v1)

Abstract: This study investigates game-based learning in the context of the educational game "Jo Wilder and the Capitol Case," focusing on predicting student performance using various machine learning models, including K-Nearest Neighbors (KNN), Multi-Layer Perceptron (MLP), and Random Forest. The research aims to identify the features most predictive of student performance and correct question answering. By leveraging gameplay data, we establish complete benchmarks for these models and explore the importance of applying proper data aggregation methods. By compressing all numeric data to min/max/mean/sum and categorical data to first, last, count, and nunique, we reduced the size of the original training data from 4.6 GB to 48 MB of preprocessed training data, maintaining high F1 scores and accuracy. Our findings suggest that proper preprocessing techniques can be vital in enhancing the performance of non-deep-learning-based models. The MLP model outperformed the current state-of-the-art French Touch model, achieving an F-1 score of 0.83 and an accuracy of 0.74, suggesting its suitability for this dataset. Future research should explore using larger datasets, other preprocessing techniques, more advanced deep learning techniques, and real-world applications to provide personalized learning recommendations to students based on their predicted performance. This paper contributes to the understanding of game-based learning and provides insights into optimizing educational game experiences for improved student outcomes and skill development.

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References (19)
  1. Tahsin Cliglu and Ahmet Berk Ustun. 2023. The Effects of Mobile AR-based Biology Learning Experience on Students’ Motivation, Self-Efficacy, and Attitudes in Online Learning. In Journal of Science Education and Technology, Volume 32, pages 309–337. Springer Nature.
  2. Elsevier. 2023. Multilayer Perceptron. https://www.sciencedirect.com/topics/computer-science/multilayer-perceptron. [Online; accessed 28-April-2023].
  3. Multimodal learning analytics for game-based learning. volume 51, pages 1505–1526.
  4. Predictive student modeling in game-based learning environments with word embedding representations of reflection. In International Journal of Artificial Intelligence in Education, Volume 31, pages 1–23. Springer New York.
  5. Multilayer Perceptrons. Deep Learning. [Online; accessed 28-April-2023].
  6. Understanding the role of digital technologies in education: A review. In Sustainable Operations and Computer, Volume 3, pages 275–285. ScienceDirect.
  7. Feature-aware knowledge tracing for generation of concept-knowledge reports in an intelligent tutoring system. In 2019 IEEE Tenth International Conference on Technology for Education (T4E), pages 142–145.
  8. Development of an adaptive game-based diagnostic and remedial learning system based on the concept-effect model for improving learning achievements in mathematics. volume 24, pages 36 – 53.
  9. Effects of digital game-based learning on students’ self-efficacy, motivation, anxiety, and achievements in learning mathematics. In Journal of Computers in Education, pages 151–166. SpringerLink.
  10. Richard E. Mayer. 2019. Computer Games in Education. In Annual Review of Psychology, Volume 70, pages 531–549. Annual Reviews.
  11. Kevin McAlister. 2023. Tree-based estimators: Bagging, random forests, and boosting. [Accessed: April 28, 2023].
  12. Multimodal Goal Recognition in Open-World Digital Games. In Proceedings of the AAAI Conference on Artificial Intelligence and Interactive Digital Entertainment, 13, pages 80–86. Association for Computing Machinery.
  13. scikit-learn: mutual_info_classif. https://scikit-learn.org/stable/modules/generated/sklearn.feature_selection.mutual_info_classif.html. [Online; accessed 28-April-2023].
  14. Amin Pouriyeh. 2023a. Cs 334: Machine learning decision trees. PowerPoint Presentation. [Accessed: April 28, 2023].
  15. Amin Pouriyeh. 2023b. Cs 334: Machine learning feature selection methods. PowerPoint Presentation. [Accessed: April 28, 2023].
  16. Amin Pouriyeh. 2023c. Cs 334: Machine learning knn. PowerPoint Presentation. [Accessed: April 28, 2023].
  17. ResearchGate. 2020. Multilayer Perceptron: Advantages and Disadvantages. https://www.researchgate.net/figure/Multilayer-Perceptron-Advantages-and -Disadvantages_tbl4_338950098. [Online; accessed 28-April-2023].
  18. Computer-based technology and student engagement: a critical review of the literature. In International Journal of Educational Technology in Higher Education, Volume 14, page 25. Springer Open.
  19. Jo wilder and the capitol case: A taxonomy of uses for a historical inquiry game in 4th grade classrooms in wisconsin.

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