Exploring Behavior Representation for Learning Analytics

M. Worsley, Stefan Scherer, Louis-Philippe Morency, Paulo Blikstein
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引用次数: 16

Abstract

Multimodal analysis has long been an integral part of studying learning. Historically multimodal analyses of learning have been extremely laborious and time intensive. However, researchers have recently been exploring ways to use multimodal computational analysis in the service of studying how people learn in complex learning environments. In an effort to advance this research agenda, we present a comparative analysis of four different data segmentation techniques. In particular, we propose affect- and pose-based data segmentation, as alternatives to human-based segmentation, and fixed-window segmentation. In a study of ten dyads working on an open-ended engineering design task, we find that affect- and pose-based segmentation are more effective, than traditional approaches, for drawing correlations between learning-relevant constructs, and multimodal behaviors. We also find that pose-based segmentation outperforms the two more traditional segmentation strategies for predicting student success on the hands-on task. In this paper we discuss the algorithms used, our results, and the implications that this work may have in non-education-related contexts.
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探索学习分析的行为表示
多模态分析一直是研究学习的重要组成部分。从历史上看,学习的多模态分析是非常费力和耗时的。然而,研究人员最近一直在探索如何使用多模态计算分析来研究人们如何在复杂的学习环境中学习。为了推进这一研究议程,我们对四种不同的数据分割技术进行了比较分析。特别是,我们提出了基于情感和姿态的数据分割,作为基于人的分割和固定窗口分割的替代方案。在一项针对开放式工程设计任务的十个二人组的研究中,我们发现基于情感和姿势的分割在绘制学习相关构念和多模态行为之间的相关性方面比传统方法更有效。我们还发现,基于姿势的分割在预测学生在实践任务中的成功方面优于两种更传统的分割策略。在本文中,我们讨论了所使用的算法,我们的结果,以及这项工作在非教育相关背景下可能产生的影响。
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