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Analysing Structured Learning Behaviour in Massive Open Online Courses (MOOCs): An Approach Based on Process Mining and Clustering

机译:大规模在线公开课程(MOOC)中的结构化学习行为分析:一种基于过程挖掘和聚类的方法

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The increasing use of digital systems to support learning leads to a growth in data regarding both learning processes and related contexts. Learning Analytics offers critical insights from these data, through an innovative combination of tools and techniques. In this paper, we explore students’ activities in a MOOC from the perspective of personal constructivism, which we operationalized as a combination of learning behaviour and learning progress. This study considers students’ data analyzed as per the MOOC Process Mining: Data Science in Action. We explore the relation between learning behaviour and learning progress in MOOCs, with the purpose to gain insight into how passing and failing students distribute their activities differently along the course weeks, rather than predict students' grades from their activities. Commonly-studied aggregated counts of activities, specific course item counts, and order of activities were examined with cluster analyses, means analyses, and process mining techniques. We found four meaningful clusters of students, each representing specific behaviour ranging from only starting to fully completing the course. Process mining techniques show that successful students exhibit a more steady learning behaviour. However, this behaviour is much more related to actually watching videos than to the timing of activities. The results offer guidance for teachers.
机译:数字系统越来越多地用于支持学习,从而导致有关学习过程和相关环境的数据不断增长。学习分析通过工具和技术的创新结合,可以从这些数据中获得重要的见解。在本文中,我们从个人建构主义的角度探讨了在MOOC中学生的活动,并将其作为学习行为和学习进度的结合进行了操作。这项研究考虑了根据MOOC过程挖掘:数据科学在行动中分析的学生数据。我们探讨了MOOC中学习行为与学习进度之间的关系,目的是了解过往和失败的学生在整个课程周内如何不同地分配他们的活动,而不是根据他们的活动来预测学生的成绩。使用聚类分析,均值分析和过程挖掘技术检查了常用的活动汇总计数,特定课程项目计数和活动顺序。我们发现了四个有意义的学生群体,每个群体代表从开始到完全完成课程的特定行为。过程挖掘技术表明,成功的学生表现出更稳定的学习行为。但是,这种行为与实际观看视频的相关性远大于活动的时间安排。结果为教师提供指导。

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