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首页> 外文期刊>Journal of Educational Data Mining >Next-Term Student Performance Prediction: A Recommender Systems Approach
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Next-Term Student Performance Prediction: A Recommender Systems Approach

机译:下一学期学生表现预测:推荐系统方法

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An enduring issue in higher education is student retention to successful graduation. National statistics indicate that most higher education institutions have four-year degree completion rates around 50%, or just half of their student populations. While there are prediction models which illuminate what factors assist with college student success, interventions that support course selections on a semester-to-semester basis have yet to be deeply understood. To further this goal, we develop a system to predict students' grades in the courses they will enroll in during the next enrollment term by learning patterns from historical transcript data coupled with additional information about students, courses and the instructors teaching them. We explore a variety of classic and state-of-the-art techniques which have proven effective for recommendation tasks in the e-commerce domain. In our experiments, Factorization Machines (FM), Random Forests (RF), and the Personalized Multi-Linear Regression model achieve the lowest prediction error. Application of a novel feature selection technique is key to the predictive success and interpretability of the FM. By comparing feature importance across populations and across models, we uncover strong connections between instructor characteristics and student performance. We also discover key differences between transfer and non-transfer students. Ultimately we find that a hybrid FM-RF method can be used to accurately predict grades for both new and returning students taking both new and existing courses. Application of these techniques holds promise for student degree planning, instructor interventions, and personalized advising, all of which could improve retention and academic performance.
机译:高等教育中的一个持久问题是学生能否成功毕业。国家统计数据表明,大多数高等教育机构的四年制学位完成率约为50%,或仅为学生人数的一半。尽管有一些预测模型可以阐明哪些因素有助于大学生取得成功,但支持每学期选择课程的干预措施尚待深入理解。为了实现这一目标,我们开发了一种系统,通过从历史成绩单数据以及有关学生,课程和教他们的附加信息的学习模式中,预测学生在下一学期将要报读的课程中的成绩。我们探索了各种经典和最先进的技术,这些技术已被证明对电子商务领域的推荐任务有效。在我们的实验中,分解机(FM),随机森林(RF)和个性化多线性回归模型实现了最低的预测误差。新颖的特征选择技术的应用是FM预测成功和可解释性的关键。通过比较人群和模型之间的特征重要性,我们发现了教师特征与学生表现之间的紧密联系。我们还发现转学生和非转学生之间的主要区别。最终,我们发现混合FM-RF方法可用于为参加新课程和现有课程的新生和回返学生准确预测成绩。这些技术的应用为学生学位规划,讲师干预和个性化咨询提供了希望,所有这些都可以提高保留率和学习成绩。

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