Harnessing Transparent Learning Analytics for Individualized Support through Auto-detection of Engagement in Face-to-Face Collaborative Learning

Qi Zhou, Wannapon Suraworachet, M. Cukurova
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Abstract

Using learning analytics to investigate and support collaborative learning has been explored for many years. Recently, automated approaches with various artificial intelligence approaches have provided promising results for modelling and predicting student engagement and performance in collaborative learning tasks. However, due to the lack of transparency and interpretability caused by the use of"black box"approaches in learning analytics design and implementation, guidance for teaching and learning practice may become a challenge. On the one hand, the black box created by machine learning algorithms and models prevents users from obtaining educationally meaningful learning and teaching suggestions. On the other hand, focusing on group and cohort level analysis only can make it difficult to provide specific support for individual students working in collaborative groups. This paper proposes a transparent approach to automatically detect student's individual engagement in the process of collaboration. The results show that the proposed approach can reflect student's individual engagement and can be used as an indicator to distinguish students with different collaborative learning challenges (cognitive, behavioural and emotional) and learning outcomes. The potential of the proposed collaboration analytics approach for scaffolding collaborative learning practice in face-to-face contexts is discussed and future research suggestions are provided.
通过自动检测面对面协作学习中的参与情况,利用透明学习分析提供个性化支持
多年来,人们一直在探索利用学习分析来研究和支持协作学习。最近,采用各种人工智能方法的自动化方法为建模和预测学生在协作学习任务中的参与度和表现提供了可喜的成果。然而,由于在学习分析的设计和实施中使用了 "黑箱 "方法,导致缺乏透明度和可解释性,对教学实践的指导可能成为一个挑战。一方面,机器学习算法和模型所形成的黑箱阻碍了用户获得有教育意义的学习和教学建议。另一方面,只关注小组和群组层面的分析可能难以为在协作小组中工作的学生个体提供具体支持。本文提出了一种透明的方法来自动检测学生在协作过程中的个人参与度。结果表明,所提出的方法可以反映学生的个体参与度,并可作为一种指标来区分学生在协作学习中遇到的不同挑战(认知、行为和情感)和学习成果。本文讨论了所提出的协作分析方法在面对面情境中为协作学习实践提供支架的潜力,并提出了未来的研究建议。
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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