Data-Driven Modeling of Learners’ Individual Differences for Predicting Engagement and Success in Online Learning

Kamil Akhuseyinoglu, Peter Brusilovsky
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引用次数: 8

Abstract

Individual differences have been recognized as an important factor in the learning process. However, there are few successes in using known dimensions of individual differences in solving an important problem of predicting student performance and engagement in online learning. At the same time, learning analytics research has demonstrated that the large volume of learning data collected by modern e-learning systems could be used to recognize student behavior patterns and could be used to connect these patterns with measures of student performance. Our paper attempts to bridge these two research directions. By applying a sequence mining approach to a large volume of learner data collected by an online learning system, we build models of student learning behavior. However, instead of following modern work on behavior mining (i.e., using this behavior directly for performance prediction tasks), we attempt to follow traditional work on modeling individual differences in quantifying this behavior on a latent data-driven personality scale. Our research shows that this data-driven model of individual differences performs significantly better than several traditional models of individual differences in predicting important parameters of the learning process, such as success and engagement.
学习者个体差异的数据驱动模型用于预测在线学习的投入和成功
个体差异已被认为是学习过程中的一个重要因素。然而,在使用已知的个体差异维度来解决预测在线学习中学生表现和参与的重要问题方面,很少有成功的。与此同时,学习分析研究表明,现代电子学习系统收集的大量学习数据可用于识别学生的行为模式,并可用于将这些模式与学生表现的衡量标准联系起来。本文试图将这两个研究方向连接起来。通过对在线学习系统收集的大量学习者数据应用序列挖掘方法,我们建立了学生学习行为模型。然而,我们没有遵循现代行为挖掘的工作(即,直接使用这种行为进行性能预测任务),而是试图遵循传统的工作,在潜在数据驱动的人格量表上量化这种行为,对个体差异进行建模。我们的研究表明,在预测学习过程的重要参数(如成功和参与)方面,这种数据驱动的个体差异模型比几种传统的个体差异模型表现得更好。
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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