Early Student-at-Risk Detection by Current Learning Performance and Learning Behavior Indicators

IF 1.2 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
T. A. Kustitskaya, A. A. Kytmanov, M. Noskov
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引用次数: 6

Abstract

Abstract The article is focused on the problem of early prediction of students’ learning failures with the purpose of their possible prevention by timely introducing supportive measures. We propose an approach to designing a predictive model for an academic course or module taught in a blended learning format. We introduce certain requirements to predictive models concerning their applicability to the educational process such as interpretability, actionability, and adaptability to a course design. We test three types of classifiers meeting these requirements and choose the one that provides best performance starting from the early stages of the semester, and therefore provides various opportunities to timely support at-risk students. Our empirical studies confirm that the proposed approach is promising for the development of an early warning system in a higher education institution. Such systems can positively influence student retention rates and enhance learning and teaching experience for a long term.
通过当前学习表现和学习行为指标检测早期学生的风险
摘要本文着重探讨了早期预测学生学习失败的问题,目的是通过及时引入支持措施来预防学生学习失败。我们提出了一种为以混合学习形式教授的学术课程或模块设计预测模型的方法。我们介绍了预测模型在教育过程中的适用性的某些要求,如可解释性、可操作性和对课程设计的适应性。我们测试了满足这些要求的三种类型的分类器,并从学期的早期阶段开始选择一种表现最好的分类器,从而为及时支持有风险的学生提供各种机会。我们的实证研究证实,所提出的方法对高等教育机构早期预警系统的开发是有希望的。这样的系统可以积极影响学生的保留率,并长期提高学习和教学体验。
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来源期刊
Cybernetics and Information Technologies
Cybernetics and Information Technologies COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
3.20
自引率
25.00%
发文量
35
审稿时长
12 weeks
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