An Enhanced Topic Modeling Method in Educational Domain by Integrating LDA with Semantic

Ruofei Ding, Pucheng Huang, Shumin Chen, Jiale Zhang, Jingxiu Huang, Yunxiang Zheng
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Abstract

With the development of online courses, students' discussion texts in online forums and communication groups are increasing. Teachers can use these texts to monitor student learning so that they can adapt the pace of instruction accordingly. And textual topics, as the important information of the text, can be extracted from the text by topic modeling. Currently, a Latent Dirichlet Allocation (LDA) method has been used to identify the critical main topics discussed by students. However, LDA is based on word frequency and ignores semantic information. In this study, we propose a model for fusing semantic information into LDA. To verify the validity of our model, we collected two MOOC datasets for testing and conducted an ablation study using Silhouette Coefficient value and Calinski-Harabasz score as the criterion. The results show that our method is scientifically feasible and better than LDA in the field of educational topic modeling. Thus, our method is able to perform topic modeling more accurately compared to LDA. It can be used by teachers to automatically analyze large amounts of student discussion data to guide personalized learning paths.
通过将 LDA 与语义整合,增强教育领域的主题建模方法
随着在线课程的发展,学生在在线论坛和交流群组中的讨论文本越来越多。教师可以利用这些文本来监控学生的学习情况,从而相应地调整教学进度。而文本主题作为文本的重要信息,可以通过主题建模从文本中提取出来。目前,已有人使用潜狄利克特分配(LDA)方法来识别学生讨论的关键主要话题。然而,LDA 基于词频,忽略了语义信息。在本研究中,我们提出了一种将语义信息融入 LDA 的模型。为了验证模型的有效性,我们收集了两个 MOOC 数据集进行测试,并以 Silhouette Coefficient 值和 Calinski-Harabasz score 作为标准进行了消减研究。结果表明,在教育主题建模领域,我们的方法是科学可行的,并且优于 LDA。因此,与 LDA 相比,我们的方法能更准确地进行主题建模。它可用于教师自动分析大量学生讨论数据,以指导个性化学习路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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