Computing Reviews

An empirical study of using sequential behavior pattern mining approach to predict learning styles
Fatahi S., Shabanali-Fami F., Moradi H. Education and Information Technologies23(4):1427-1445,2018.Type:Article
Date Reviewed: 10/01/18

The authors of this paper set out to determine if a group of learners’ sequential behavior patterns could be used to classify their learning style. Their approach recorded the interactions of learners in an e-learning environment, and then used sequential pattern mining techniques to separate learners into different learning styles. Whilst there are many instruments that categorize learning style, the authors chose the Myers-Briggs Type Indicator as the learning style model.

The conclusions from this research indicate that the authors’ approach separated learners into different learning styles within each dimension of the Myers-Briggs Type Indicator with a high level of accuracy. There is considerable evidence from classroom research that matching learner style to course delivery yields the greatest success, and the authors’ research brings this concept to e-learning environments.

This paper is easy to read despite the details presented in the “Research Design,” “Experiment,” and “Results” sections. I would recommend this paper to professional educators who are working in the e-learning content development area.

Reviewer:  S. M. Godwin Review #: CR146258 (1902-0063)

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