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A Human-Centered Approach for Improving Supervised Learning (2410.19778v1)

Published 14 Oct 2024 in cs.CY, cs.IR, and cs.LG

Abstract: Supervised Learning is a way of developing Artificial Intelligence systems in which a computer algorithm is trained on labeled data inputs. Effectiveness of a Supervised Learning algorithm is determined by its performance on a given dataset for a particular problem. In case of Supervised Learning problems, Stacking Ensembles usually perform better than individual classifiers due to their generalization ability. Stacking Ensembles combine predictions from multiple Machine Learning algorithms to make final predictions. Inspite of Stacking Ensembles superior performance, the overhead of Stacking Ensembles such as high cost, resources, time, and lack of explainability create challenges in real-life applications. This paper shows how we can strike a balance between performance, time, and resource constraints. Another goal of this research is to make Ensembles more explainable and intelligible using the Human-Centered approach. To achieve the aforementioned goals, we proposed a Human-Centered Behavior-inspired algorithm that streamlines the Ensemble Learning process while also reducing time, cost, and resource overhead, resulting in the superior performance of Supervised Learning in real-world applications. To demonstrate the effectiveness of our method, we perform our experiments on nine real-world datasets. Experimental results reveal that the proposed method satisfies our goals and outperforms the existing methods.

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References (28)
  1. Successful data science projects: lessons learned from kaggle competition. Kurdistan Journal of Applied Research, 2, 40–49.
  2. Ensemble learning model for diagnosing covid-19 from routine blood tests. Informatics in Medicine Unlocked, 21, 100449.
  3. A multimodal framework for depression detection during covid-19 via harvesting social media. IEEE Transactions on Computational Social Systems, .
  4. Auernhammer, J. (2020). Human-centered ai: The role of human-centered design research in the development of ai, .
  5. A hybrid deep neural network for multimodal personalized hashtag recommendation. IEEE transactions on computational social systems, 10, 2439–2459.
  6. Multilingual personalized hashtag recommendation for low resource indic languages using graph-based deep neural network. Expert Systems with Applications, 236, 121188.
  7. A hybrid filtering for micro-video hashtag recommendation using graph-based deep neural network. Engineering Applications of Artificial Intelligence, 138, 109417.
  8. A probabilistic ensemble pruning algorithm. In Sixth IEEE International Conference on Data Mining-Workshops (ICDMW’06) (pp. 878–882). IEEE.
  9. Dai, Q. (2013). A competitive ensemble pruning approach based on cross-validation technique. Knowledge-Based Systems, 37, 394–414.
  10. A contrastive topic-aware attentive framework with label encodings for post-disaster resource classification. Knowledge-Based Systems, (p. 112526).
  11. Study on feature engineering and ensemble learning for student academic performance prediction. International Journal of Advanced Computer Science and Applications, 13.
  12. An adaptive ensemble machine learning model for intrusion detection. IEEE Access, 7, 82512–82521.
  13. An ensemble learning approach for brain tumor classification using mri. In Soft Computing: Theories and Applications (pp. 645–656). Springer.
  14. The power of ensemble learning in sentiment analysis. Expert Systems with Applications, 187, 115819.
  15. Measures of diversity in classifier ensembles and their relationship with the ensemble accuracy. Machine learning, 51, 181–207.
  16. Martinez, W. (2019). Ensemble pruning via margin maximization. arXiv preprint arXiv:1906.03247, .
  17. Constructing diverse classifier ensembles using artificial training examples. In Ijcai (pp. 505–510). volume 3.
  18. An explainable contrastive-based dilated convolutional network with transformer for pediatric pneumonia detection. Applied Soft Computing, (p. 112258).
  19. An ensemble based machine learning model for diabetic retinopathy classification. In 2020 international conference on emerging trends in information technology and engineering (ic-ETITE) (pp. 1–6). IEEE.
  20. User-aware multilingual abusive content detection in social media. Information Processing & Management, 60, 103450.
  21. A context-aware attention and graph neural network-based multimodal framework for misogyny detection. Information Processing & Management, 62, 103895.
  22. Riedl, M. O. (2019). Human-centered artificial intelligence and machine learning. Human Behavior and Emerging Technologies, 1, 33–36.
  23. Predicting pulsar stars using a random tree boosting voting classifier (rtb-vc). Astronomy and Computing, 32, 100404.
  24. Wagstaff, K. (2012). Machine learning that matters. arXiv preprint arXiv:1206.4656, .
  25. Xiao, J. (2019). Svm and knn ensemble learning for traffic incident detection. Physica A: Statistical Mechanics and its Applications, 517, 29–35.
  26. Xu, W. (2019). Toward human-centered ai: a perspective from human-computer interaction. interactions, 26, 42–46.
  27. Detecting malware with an ensemble method based on deep neural network. Security and Communication Networks, 2018.
  28. Zhou, Z.-H. (2021). Ensemble learning. In Machine learning (pp. 181–210). Springer.

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