Combining analytic methods to unlock sequential and temporal patterns of self-regulated learning

John Saint, D. Gašević, W. Matcha, Nora'ayu Ahmad Uzir, A. Pardo
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引用次数: 50

Abstract

The temporal and sequential nature of learning is receiving increasing focus in Learning Analytics circles. The desire to embed studies in recognised theories of self-regulated learning (SRL) has led researchers to conceptualise learning as a process that unfolds and changes over time. To that end, a body of research knowledge is growing which states that traditional frequency-based correlational studies are limited in narrative impact. To further explore this, we analysed trace data collected from online activities of a sample of 239 computer engineering undergraduate students enrolled on a course that followed a flipped class-room pedagogy. We employed SRL categorisation of micro-level processes based on a recognised model of learning, and then analysed the data using: 1) simple frequency measures; 2) epistemic network analysis; 3) temporal process mining; and 4) stochastic process mining. We found that a combination of analyses provided us with a richer insight into SRL behaviours than any one single method. We found that better performing learners employed more optimal behaviours in their navigation through the course's learning management system.
结合分析方法解锁自我调节学习的顺序和时间模式
学习的时间和顺序性在学习分析界受到越来越多的关注。将研究嵌入公认的自我调节学习理论(SRL)的愿望使研究人员将学习概念化为一个随着时间展开和变化的过程。为此,越来越多的研究知识表明,传统的基于频率的相关研究在叙事影响方面是有限的。为了进一步探讨这一点,我们分析了从239名计算机工程本科学生的在线活动样本中收集的跟踪数据,这些学生参加了一门遵循翻转课堂教学法的课程。我们基于一个公认的学习模型对微观层面的过程进行了SRL分类,然后使用以下方法分析了数据:1)简单的频率测量;2)认知网络分析;3)时态过程挖掘;4)随机过程挖掘。我们发现,与任何单一方法相比,综合分析可以让我们更深入地了解SRL行为。我们发现,表现较好的学习者在通过课程学习管理系统进行导航时采用了更多的最佳行为。
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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