Learning about social learning in MOOCs: From statistical analysis to generative model
Christopher G. Brinton, Mung Chiang, Shaili Jain, Henry Lam, Zhenming, Liu, Felix Ming Fai Wong

TL;DR
This paper analyzes user behavior in MOOC forums, identifying decline patterns and noisy discussions, and introduces a generative model to classify and rank thread relevance, improving understanding of social learning dynamics.
Contribution
It presents a novel generative model for MOOC discussion threads and effective algorithms for classifying and ranking thread relevance, addressing high decline rates and noisy discussions.
Findings
Discussion activity declines over course duration.
Active instructor participation increases discussion volume.
The proposed ranking algorithm outperforms baseline methods.
Abstract
We study user behavior in the courses offered by a major Massive Online Open Course (MOOC) provider during the summer of 2013. Since social learning is a key element of scalable education in MOOCs and is done via online discussion forums, our main focus is in understanding forum activities. Two salient features of MOOC forum activities drive our research: 1. High decline rate: for all courses studied, the volume of discussions in the forum declines continuously throughout the duration of the course. 2. High-volume, noisy discussions: at least 30% of the courses produce new discussion threads at rates that are infeasible for students or teaching staff to read through. Furthermore, a substantial portion of the discussions are not directly course-related. We investigate factors that correlate with the decline of activity in the online discussion forums and find effective strategies to…
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Taxonomy
TopicsOnline Learning and Analytics · Mobile Crowdsensing and Crowdsourcing · Expert finding and Q&A systems
