Automatic Piecewise Linear Regression for Predicting Student Learning Satisfaction
- URL: http://arxiv.org/abs/2510.10639v1
- Date: Sun, 12 Oct 2025 14:48:50 GMT
- Title: Automatic Piecewise Linear Regression for Predicting Student Learning Satisfaction
- Authors: Haemin Choi, Gayathri Nadarajan,
- Abstract summary: This study demonstrates that a model that combines boosting with interpretability, automatic piecewise linear regression offers the best fit for predicting learning satisfaction.<n>Students' time management and concentration abilities, perceived helpfulness to classmates, and participation in offline courses have the most significant positive impact on learning satisfaction.
- Score: 0.7212939068975618
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Although student learning satisfaction has been widely studied, modern techniques such as interpretable machine learning and neural networks have not been sufficiently explored. This study demonstrates that a recent model that combines boosting with interpretability, automatic piecewise linear regression(APLR), offers the best fit for predicting learning satisfaction among several state-of-the-art approaches. Through the analysis of APLR's numerical and visual interpretations, students' time management and concentration abilities, perceived helpfulness to classmates, and participation in offline courses have the most significant positive impact on learning satisfaction. Surprisingly, involvement in creative activities did not positively affect learning satisfaction. Moreover, the contributing factors can be interpreted on an individual level, allowing educators to customize instructions according to student profiles.
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