使用机器学习建模动机因素对学生学习策略和表现的影响

F. Orji, Julita Vassileva
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引用次数: 0

摘要

本研究提出了一种可用于高等教育学生学习策略与表现建模的方法。本研究使用了学习的关键属性,包括内在动机、外在动机、自主性、关联性、能力和自尊。使用924名大学生的数据实施、训练、评估和测试了五种机器学习模型。对比分析表明,基于树的模型,特别是随机森林和决策树的预测精度达到94.9%,优于其他模型。本研究建立的模型可用于预测学生的学习策略和表现,并可用于实施有针对性的干预措施,以提高学习进度。研究结果强调了在在线教育系统中整合解决不同动机维度的策略的重要性,因为它提高了学生的参与度并促进了持续学习。研究结果还强调了对这些属性进行集体建模以个性化和适应学习过程的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling the Impact of Motivation Factors on Students’ Study Strategies and Performance Using Machine Learning
This research presents a proposed approach that could be applied in modeling students’ study strategies and performance in higher education. The research used key learning attributes, including intrinsic motivation, extrinsic motivation, autonomy, relatedness, competence, and self-esteem in the modeling. Five machine learning models were implemented, trained, evaluated, and tested with data from 924 university students. The comparative analysis reveals that tree-based models, particularly random forest and decision trees, outperform other models, achieving a prediction accuracy of 94.9%. The models built in this research can be used in predicting student study strategies and performance and this can be applied in implementing targeted interventions for improving learning progress. The research findings emphasize the importance of incorporating strategies that address diverse motivation dimensions in online educational systems, as it increases student engagement and promotes continuous learning. The findings also highlight the potential for modeling these attributes collectively to personalize and adapt learning process.
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