基于模糊模型的MOOC课程行为绩效评价与情绪分析

P. Porouhan, W. Premchaiswadi
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引用次数: 3

摘要

本研究的主要目的是比较和区分在MOOC(大规模开放在线课程)结束后“获得证书”的一组学生与“未成功退出”课程的另一组学生的行为差异和情绪变化。为此,一种基于基于频率和时间-性能度量的过程挖掘过程发现技术,即所谓的Fuzzy Miner,被应用于先前从真实学习环境中收集的一组事件日志。所得到的模糊图/模型显示了两组之间在行为结构和执行/执行任务(和活动)的顺序,等待时间的平均(平均)持续时间(或不活动间隔/时间间隔)以及情绪变化和变化方面的显著差异。研究结果不仅有利于MOOC课程开发者,也有利于讲师和研究人员,从而提高在线课程和教学大纲的流失率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Behavioral Performance Evaluation and Emotion Analytics of a MOOC Course via Fuzzy Modeling
The main objective of this study is to compare and distinguish both behavioral differences and emotional changes of a group of students who "earned a certificate" after the end of a MOOC (Massive Open Online Course), versus another groups of students who "dropped out" the course unsuccessfully. To do this, a process mining process discovery technique so-called Fuzzy Miner, based on Frequency-Based and Time-Performance metrics, was applied on a set of event logs previously collected from an authentic learning environment. The resulting fuzzy graphs/models showed a significant dissimilarity between the two groups in terms of the behavioral structure and the sequence of the performed/executed tasks (and activities), the average (mean) duration of the waiting times (or inactive interval/time gaps) in addition to the emotional mood shifts and changes. The findings of the study can be beneficial to not only the MOOC course developers, but to lecturers and researchers as well, in such a way leading to higher attrition rate running online courses and syllabuses.
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