A predictive model for the identification of learning styles in MOOC environments

Massive online open course (MOOC) platform generates a large amount of data, which provides many opportunities for studying the behaviors of learners. In parallel, recent advancements in machine learning techniques and big data analysis have created new opportunities for a better understanding of ho...

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Veröffentlicht in:Cluster computing 2020-06, Vol.23 (2), p.1303-1328
Hauptverfasser: Hmedna, Brahim, El Mezouary, Ali, Baz, Omar
Format: Artikel
Sprache:eng
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Zusammenfassung:Massive online open course (MOOC) platform generates a large amount of data, which provides many opportunities for studying the behaviors of learners. In parallel, recent advancements in machine learning techniques and big data analysis have created new opportunities for a better understanding of how learners behave and learn in environments known for their massiveness and openness. The work is about predicting learners’ learning styles based on their learning traces. The Felder Silverman learning style model (FSLSM) is adopted since it is one of the most commonly used models in technology-enhanced learning. In order to attend our objective, we analyzed data collected from the edX course “statistical learning” (session Winter 2015 and Winter 2016), administered via Stanford’s Logunita platform. The results show that decision tree performs best for all 3 dimensions, with an accuracy of higher than 98% and a reduced risk of overfitting the training data.
ISSN:1386-7857
1573-7543
DOI:10.1007/s10586-019-02992-4