Title
A Learning Analytics Methodology for Understanding Social Interactions in MOOCs
Abstract
One of the characteristics of massive open online courses (MOOCs) is that the overall number of social interactions tend to be higher than in traditional courses, hindering the analysis of social learning. Learners typically ask or answer questions using the forum. This makes messages a rich source of information, which can be used to infer learners’ behavior and outcomes. It is not feasible for teachers to process all forum messages and automated tools and analysis are required. Although there are some tools for analyzing learners’ interactions, there is a need for methodologies and integrated tools that help to interpret the learning process based on social interactions in the forum. This paper presents the 3S (Social, Sentiments, Skills) learning analytics methodology for analyzing forum interactions in MOOCs. This methodology considers a temporal analysis combining the social, sentiments, and skill dimensions that can be extracted from forum data. We also introduce LATƎS, a learning analytics tool for edX/Open edX related to the three dimensions (3S), which includes visualizations to guide the proposed methodology. We apply the 3S methodology and the tool to an MOOC on Java programming. Results showed, among others, the action–reaction effect produced when learners increase their participation after instructor's events. Moreover, a decrease of positive sentiments over time and before deadlines of open-ended assignments was also observed and that there were certain skills, which caused more troubles (e.g., arrays and loops). These results acknowledge the importance of using a learning analytics methodology to detect problems in MOOCs.
Year
DOI
Venue
2019
10.1109/TLT.2018.2883419
IEEE Transactions on Learning Technologies
Keywords
Field
DocType
Tools,Data visualization,Education,Stakeholders,Blogs,Visualization
Data science,Ask price,Learning analytics,Computer science,Social learning,Multimedia,Java
Journal
Volume
Issue
ISSN
12
4
1939-1382
Citations 
PageRank 
References 
0
0.34
0
Authors
5