Towards an integration of text and graph clustering methods as a lens for studying social interaction in MOOCs

Author:

Yang Diyi,Wen Miaomiao,Kumar Abhimanu,Xing Eric P.,Rose Carolyn Penstein

Abstract

<p>In this paper, we describe a novel methodology, grounded in techniques from the field of machine learning, for modeling emerging social structure as it develops in threaded discussion forums, with an eye towards application in the threaded discussions of massive open online courses (MOOCs). This modeling approach integrates two simpler, well established prior techniques, namely one related to social network structure and another related to thematic structure of text. As an illustrative application of the integrated technique’s use and utility, we use it as a lens for exploring student dropout behavior in three different MOOCs. In particular, we use the model to identify twenty emerging subcommunities within the threaded discussions of each of the three MOOCs. We then use a survival model to measure the impact of participation in identified subcommunities on attrition along the way for students who have participated in the course discussion forums of the three courses. In each of three MOOCs we find evidence that participation in two to four subcommunities out of the twenty is associated with significantly higher or lower dropout rates than average. A qualitative post-hoc analysis illustrates how the learned models can be used as a lens for understanding the values and focus of discussions within the subcommunities, and in the illustrative example to think about the association between those and detected higher or lower dropout rates than average in the three courses. Our qualitative analysis demonstrates that the patterns that emerge make sense: It associates evidence of stronger expressed motivation to actively participate in the course as well as evidence of stronger cognitive engagement with the material in subcommunities associated with lower attrition, and the opposite in subcommunities associated with higher attrition. We conclude with a discussion of ways the modeling approach might be applied, along with caveats from limitations, and directions for future work.</p>

Publisher

Athabasca University Press

Subject

Education

Cited by 25 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Ensemble models based on CNN and LSTM for dropout prediction in MOOC;Expert Systems with Applications;2024-01

2. Facteurs a priori et in situ de l’engagement des étudian;Revue internationale de pédagogie de l’enseignement supérieur;2023-07-15

3. Research on collaborative learning evaluation model based on data mining for group discussions;Proceedings of the 2023 8th International Conference on Distance Education and Learning;2023-06-09

4. Development and Application of MOOC System for English Intercultural Communication Courses Using Neural Network;Scientific Programming;2022-07-20

5. L’engagement des étudiants dans les forums de discussion des MOOC : dimensions et indicateurs;Distances et médiations des savoirs;2021-12-18

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