基于时间聚类分析的学分制问题学生早期识别

Lê Minh Châu, Vo Thi Ngoc Chau, N. H. Phung
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引用次数: 2

摘要

在教育数据挖掘领域,早期识别学分制中的问题学生是一项具有挑战性的热门任务。只有前几个学期的学生可以被观察到的任务,这样有问题的学生可以很快被识别,并有足够的时间来提高他们的学习成绩。这个任务可以用不同的机器学习方法来解决。在本文中,我们使用无监督学习方法来确定那些效率更高且没有准备其他标记数据集的学生。在这种方法中,我们提出了一种基于动态主题模型返回的时间聚类的时间聚类分析方法。此外,我们考虑每个学生学习表现的时间特征,以形成他/她随时间所属的时间集群的模式。相似的学生有相似的模式,因此,使我们能够确定问题学生的模式类型,并更准确地识别他们。在一项评估研究中,实验结果表明,我们的方法具有更高的召回率和f测量值,优于其他无监督和有监督学习方法。通过动态主题建模得到了更好的时间聚类。因此,我们的方法适用于早期问题学生的识别任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Temporal Cluster Analysis for Early Identifying In-trouble Students in an Academic Credit System
Early in-trouble student identification in an academic credit system is a challenging popular task in the educational data mining field. Only the first few semesters of the students can be observed for the task so that the in-trouble students can be recognized soon and have enough time for improving their study performance. The task can be tackled with different machine learning approaches. In this paper, we use the unsupervised learning approach to determine those students with higher effectiveness and no preparation of other labeled data sets. In this approach, a temporal cluster analysis method is proposed in our work based on the temporal clusters returned by dynamic topic models. In addition, we consider temporal characteristics in the study performance of each student to form a pattern from the temporal clusters he/she belongs to over the time. Similar students share similar patterns and therefore, allowing us to determine the pattern types of in-trouble students and recognize them more accurately. In an evaluation study, experimental results show that our method outperforms the other unsupervised and supervised learning methods with higher Recall and F-measure values. It also obtains better temporal clusters with dynamic topic modeling. As a result, our method is suitable for the early in-trouble student identification task.
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