Article_snip

Oscar Revelo Sánchez, César Collazos Ordóñez, Miguel Redondo Duque
pp. 29 - 45, view paper, download
(https://doi.org/10.55612/s-5002-049-002), Google Scholar

Submitted on 30 Nov -0001 - Accepted on 30 Nov -0001

Interaction Design and Architecture(s) IxD&A Journal
Issue N. 49, Summer 2021

Abstract

Considering that group formation is one of the key processes when developing activities in collaborative learning contexts, this paper aims to propose a technique based on an approach of genetic algorithms to achieve homogeneous groups, considering the students’ personality traits as grouping criteria. For its validation, an experiment was designed with 132 first semesters engineering students, quantifying their personality traits through the “Big Five Inventory”, forming workgroups and developing a collaborative activity in initial Programming courses. The experiment made it possible to compare the results obtained by the students applying the proposed approach to those obtained through other group formation strategies. It was demonstrated through the experiment that the homogeneous groups generated by the proposed technique produce better academic results compared to thegrouping techniqueby students’ preference, traditionally used by the teachers when developing a collaborative activity.

Keywords: Collaborative learning, Empirical study, Genetic algorithms, Group formation, Personality traits

Cite this article as:
Revelo Sánchez O., Collazos Ordóñez C., Redondo Duque M.: Group formation in collaborative learning contexts based on personality traits: An empirical study in initial Programming courses, Interaction Design & Architecture(s) – IxD&A Journal, N.49, -0001, pp. 29–45, DOI: https://doi.org/10.55612/s-5002-049-002

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