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Is MOOC Learning Different for Dropouts? A Visually-Driven, Multi-granularity Explanatory ML Approach

机译:MOOC的辍学学习与众不同吗?视觉驱动的多粒度解释性ML方法

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Millions of people have enrolled and enrol (especially in the Covid-19 pandemic world) in MOOCs. However, the retention rate of learners is notoriously low. The majority of the research work on this issue focuses on predicting the dropout rate, but very few use explainable learning patterns as part of this analysis. However, visual representation of learning patterns could provide deeper insights into learners' behaviour across different courses, whilst numerical analyses can - and arguably, should - be used to confirm the latter. Thus, this paper proposes and compares different granularity visualisations for learning patterns (based on clickstream data) for both course completers and non-completers. In the large-scale MOOCs we analysed, across various domains, our fine-grained, fish-eye visualisation approach showed that non-completers are more likely to jump forward in their learning sessions, often on a 'catch-up' path, whilst completers exhibit linear behaviour. For coarser, bird-eye granularity visualisation, we observed learners' transition between types of learning activity, obtaining typed transition graphs. The results, backed up by statistical significance analysis and machine learning, provide insights for course instructors to maintain engagement of learners by adapting the course design to not just 'dry' predicted values, but explainable, visually viable paths extracted.
机译:数以百万计的人已经在MOOC中注册(特别是在Covid-19大流行世界中)。但是,众所周知,学习者的保留率很低。关于这个问题的大部分研究工作都集中在预测辍学率,但是很少有使用可解释的学习模式作为该分析的一部分。然而,学习模式的可视化表示可以更深入地了解不同课程中学习者的行为,而数值分析可以(并且可以说是)可以用来确认后者。因此,本文提出并比较了针对课程完成者和非完成者的学习模式(基于点击流数据)的不同粒度可视化。在我们分析的各个领域的大规模MOOC中,我们细粒度的鱼眼可视化方法表明,未完成的人更有可能在学习过程中向前迈进,通常采用“追赶”的方式,而完成者表现出线性行为。对于更粗略的鸟瞰粒度可视化,我们观察了学习者在学习活动类型之间的过渡,从而获得了类型化的过渡图。结果得到统计显着性分析和机器学习的支持,通过使课程设计不仅适应“干燥”的预测值,而且提取出的可解释的,在视觉上可行的路径,为课程讲师提供见解,以保持学习者的参与度。

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