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Students behavioural analysis in an online learning environment using data mining

机译:使用数据挖掘的在线学习环境中的学生行为分析

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The focus of this research was to use Educational Data Mining (EDM) techniques to conduct a quantitative analysis of students interaction with an e-learning system through instructor-led non-graded and graded courses. This exercise is useful for establishing a guideline for a series of online short courses for them. A group of 412 students' access behaviour in an e-learning system were analysed and they were grouped into clusters using K-Means clustering method according to their course access log records. The results explained that more than 40% from the student group are passive online learners in both graded and non-graded learning environments. The result showed that the difference in the learning environments could change the online access behaviour of a student group. Clustering divided the student population into five access groups based on their course access behaviour. Among these groups, the least access group (NG-41% and G-42%) and the highest access group (NG-9% and G-5%) could be identified very clearly due to their access variation from the rest of the groups.
机译:这项研究的重点是使用教育数据挖掘(EDM)技术,通过讲师指导的非分级和分级课程,对学生与电子学习系统的互动进行定量分析。此练习有助于为他们建立一系列在线短期课程的指南。对一组412名学生在电子学习系统中的访问行为进行了分析,并根据他们的课程访问日志记录,使用K-Means聚类方法将他们分组。结果说明,在分级和非分级学习环境中,学生群体中超过40%是被动的在线学习者。结果表明,学习环境的差异可能会改变学生群体的在线访问行为。聚类根据学生的课程访问行为将其分为五个访问组。在这些组中,由于访问权限与其他组的访问方式有所不同,因此可以非常清楚地确定访问最少的组(NG-41%和G-42%)和访问最多的组(NG-9%和G-5%)。组。

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