Creating and Collecting e-Learning Event Logs to Analyze Learning Behavior of Students through Process Mining

A. Nammakhunt, P. Porouhan, W. Premchaiswadi
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Abstract

Many traditional educational management models are being switched or shifted into online platforms; thus, assessing behavioral aspects of learners is essential to improving the quality of online teaching and learning processes. Currently, a problem in managing online teaching of courses is that instructors do not have the appropriate tools and techniques to be fully aware of students’ behavioral patterns in a data-driven and process-aware approach. This study is divided into three main parts. In the first part, a dataset of online students is transformed and preprocessed. In the second part, the Fuzzy Miner algorithm supported by Fluxicon Disco is applied to the dataset to understand the learning process of the students in terms of the duration and length of the tutorial videos watched online (i.e., fully watched, partially watched, paused, and resumed intervals) and in terms of the frequencies of all activities. In the third part, a comparison between behavioral patterns of high-performance group of students versus their low-performance counterparts attending the same course was conducted, and we used the Dotted Chart Analysis technique supported by ProM to conduct and make the comparisons. The results of the study showed significant differences between the two groups in terms of the duration spent on the tutorial videos and in terms of the sequence and order of the activities performed and executed. The findings of the research can be used by instructors, administrators, and educational managers to improve the course curriculum management process or to boost effective coaching and teaching styles, leading to the optimization of students’ learning process by increasing educators’ awareness about students’ weaknesses and strengths.
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创建和收集电子学习事件日志,通过过程挖掘分析学生的学习行为
许多传统的教育管理模式正在被转换或转移到在线平台;因此,评估学习者的行为方面对于提高在线教学和学习过程的质量至关重要。目前,管理在线课程教学的一个问题是,教师没有适当的工具和技术,以数据驱动和过程感知的方法来充分了解学生的行为模式。本研究主要分为三个部分。在第一部分中,对在线学生数据集进行了转换和预处理。在第二部分中,我们将Fluxicon Disco支持的Fuzzy Miner算法应用于数据集,根据在线观看教程视频的时长和长度(即完全观看、部分观看、暂停和恢复的间隔)以及所有活动的频率来了解学生的学习过程。在第三部分中,我们对同一课程的高绩效组学生和低绩效组学生的行为模式进行了比较,我们使用了ProM支持的虚点图分析技术进行比较。研究结果显示,两组学生在观看教学视频的时间长短以及完成和执行活动的顺序和顺序上存在显著差异。研究结果可以被教师、管理人员和教育管理者用来改进课程的课程管理过程,或促进有效的指导和教学风格,通过提高教育者对学生优缺点的认识,从而优化学生的学习过程。
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CiteScore
2.80
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0.00%
发文量
120
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