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Use of Wearable Technologies with Machine Learning to Understand University Student Learning Behaviours to Predict Students at Risk of Failing

机译:使用机器学习的可穿戴技术了解大学生学习行为,以预测失败风险的学生

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The challenges of effective teaching in mass education environments are well documented. The cohorts of large size generally means that identification of struggling students is usually only at a point when meaningful interventions are too late. This paper reports on the use of novel technologies to provide insights into areas of learner behaviour in large-scale computer programming modules. Accordingly, this paper brings together a previous series of investigative studies of student key engagement points during a typical programming module (1) seat position tracking during programming lectures, (2) Video Lecture Capture viewing behaviours and (3) Student Heart Rate monitoring during lectures. The paper combines the significant findings of each investigation to provide a variety of analysis using Machine Learning (ML) classification modeling. The purpose of the MC study is to create models that could identify students that are likely to pass and those that may be at risk of failing the module.
机译:群众教育环境有效教学的挑战得到了很好的记录。大尺寸的队列通常意味着挽救斗争学生通常只是在有意义的干预太晚时的一点。本文报告了新技术的使用,为大型计算机编程模块中的学习者行为提供了深入。因此,本文在编程讲座期间,在典型的编程模块(1)座位位置跟踪期间,在典型的编程模块(1)座椅位置跟踪期间,在典型的编程模块(1)座椅位置跟踪期间,将先前的学生关键参与点进行了一系列的调查研究。(2)视频讲座捕获观察行为和(3)讲座期间的学生心率监测。本文结合了每次调查的重要发现,通过机器学习(ML)分类建模提供多种分析。 MC研究的目的是创建可以识别可能通过的学生的模型以及可能面临失败模块的风险的学生。

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