Early Detection of At-Risk Students Using Machine Learning Based on LMS Log Data

N. Kondo, Midori Okubo, T. Hatanaka
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引用次数: 31

Abstract

Analytics in education has been received much attention over the past decade. It is necessary to maintain high retention rate in any institutions of higher education, therefore several attempts on the application of analytics have been done for this problem. To detect students at high drop-out risk early and intervene them effectively, utilizing the educational big data can be useful. In this paper, an automatic detection method of academically at-risk students by using log data of learning management systems is considered. Some well-known machine learning methods are used to build a predictive model of student performance evaluated by GPA. By using actual data set, we investigate an availability of the proposed method and discuss its ability to early detection of off-task behavior. The experimental results indicated that some characteristics of behavior about learning which affect the learning outcomes can be detected with only the online log data. Furthermore, comparative importance of explanatory variables obtained by the approach would help to estimate which variable affects comparatively to the learning outcome and it can be used in institutional research.
基于LMS日志数据的机器学习早期检测高危学生
在过去的十年里,教育中的分析学受到了广泛的关注。任何高等教育机构都需要保持较高的留校率,因此对这一问题进行了一些分析应用的尝试。利用教育大数据,及早发现高退学风险学生,并对其进行有效干预。本文研究了一种利用学习管理系统的日志数据对学业风险学生进行自动检测的方法。一些著名的机器学习方法被用来建立一个以GPA评估学生表现的预测模型。通过使用实际数据集,我们研究了该方法的有效性,并讨论了其早期检测脱任务行为的能力。实验结果表明,仅使用在线日志数据就可以检测到影响学习结果的一些学习行为特征。此外,通过该方法获得的解释变量的相对重要性有助于估计哪些变量对学习结果有相对影响,并可用于制度研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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