Title
Sentiment analysis in MOOCs: A case study.
Abstract
Forum messages in MOOCs (Massive Open Online Courses) are the most important source of information about the social interactions happening in these courses. Forum messages can be analyzed to detect patterns and learners' behaviors. Particularly, sentiment analysis (e.g., classification in positive and negative messages) can be used as a first step for identifying complex emotions, such as excitement, frustration or boredom. The aim of this work is to compare different machine learning algorithms for sentiment analysis, using a real case study to check how the results can provide information about learners' emotions or patterns in the MOOC. Both supervised and unsupervised (lexicon-based) algorithms were used for the sentiment analysis. The best approaches found were Random Forest and one lexicon based method, which used dictionaries of words. The analysis of the case study also showed an evolution of the positivity over time with the best moment at the beginning of the course and the worst near the deadlines of peer-review assessments.
Year
Venue
Keywords
2018
IEEE Global Engineering Education Conference
sentiment analysis,MOOCs,learners' behavior,learning analytics,machine learning
Field
DocType
ISSN
Learning analytics,Sentiment analysis,Lexicon,Boredom,Natural language processing,Artificial intelligence,Engineering,Random forest,Multimedia
Conference
2165-9567
Citations 
PageRank 
References 
1
0.36
0
Authors
5