A Strategy Based on Genetic Algorithms for Forming Optimal Collaborative Learning Groups: An Empirical Study

Considering that group formation is key when developing activities in collaborative learning scenarios, this paper aims to propose a strategy based on a genetic algorithm approach for achieving optimal collaborative learning groups, considering the students’ personality traits as grouping criteria....

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Main Authors: Oscar Revelo Sánchez, César A. Collazos, Miguel A. Redondo
Format: Article
Language:English
Published: MDPI AG 2021-02-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/10/4/463
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spelling doaj-a749964eb2c8440c9e906d9b1f41e0c42021-02-15T00:00:23ZengMDPI AGElectronics2079-92922021-02-011046346310.3390/electronics10040463A Strategy Based on Genetic Algorithms for Forming Optimal Collaborative Learning Groups: An Empirical StudyOscar Revelo Sánchez0César A. Collazos1Miguel A. Redondo2Galeras.NET Research Group, Universidad de Nariño, San Juan de Pasto 52001, ColombiaIDIS Research Group, Universidad del Cauca, Popayán 190001, ColombiaCHICO Research Group, Universidad de Castilla-La Mancha, 13071 Ciudad Real, SpainConsidering that group formation is key when developing activities in collaborative learning scenarios, this paper aims to propose a strategy based on a genetic algorithm approach for achieving optimal collaborative learning groups, considering the students’ personality traits as grouping criteria. A controlled experiment was designed with 238 students, quantifying their personality traits through the “big five inventory” (BFI), forming working groups and developing a collaborative activity in programming and related courses. The experiment results allowed validation, not only from a computational point of view evaluating the algorithm performance but also from a pedagogical point of view, confronting the results obtained by students applying the proposed approach with those obtained through other group formation strategies. The highlight of the study is that those groups whose formation was pre-established by the teachers through the proposed strategy have generally had a better collaborative performance than the groups with traditional formation, except in the case of heterogeneous formation, at the time of developing a collaborative activity. In addition, through the experiment, it was found that not considering criteria related to personality traits before the group formation generally led to lower results.https://www.mdpi.com/2079-9292/10/4/463collaborative learningcollaborative performancegenetic algorithmsgroup formationpersonality traits
collection DOAJ
language English
format Article
sources DOAJ
author Oscar Revelo Sánchez
César A. Collazos
Miguel A. Redondo
spellingShingle Oscar Revelo Sánchez
César A. Collazos
Miguel A. Redondo
A Strategy Based on Genetic Algorithms for Forming Optimal Collaborative Learning Groups: An Empirical Study
Electronics
collaborative learning
collaborative performance
genetic algorithms
group formation
personality traits
author_facet Oscar Revelo Sánchez
César A. Collazos
Miguel A. Redondo
author_sort Oscar Revelo Sánchez
title A Strategy Based on Genetic Algorithms for Forming Optimal Collaborative Learning Groups: An Empirical Study
title_short A Strategy Based on Genetic Algorithms for Forming Optimal Collaborative Learning Groups: An Empirical Study
title_full A Strategy Based on Genetic Algorithms for Forming Optimal Collaborative Learning Groups: An Empirical Study
title_fullStr A Strategy Based on Genetic Algorithms for Forming Optimal Collaborative Learning Groups: An Empirical Study
title_full_unstemmed A Strategy Based on Genetic Algorithms for Forming Optimal Collaborative Learning Groups: An Empirical Study
title_sort strategy based on genetic algorithms for forming optimal collaborative learning groups: an empirical study
publisher MDPI AG
series Electronics
issn 2079-9292
publishDate 2021-02-01
description Considering that group formation is key when developing activities in collaborative learning scenarios, this paper aims to propose a strategy based on a genetic algorithm approach for achieving optimal collaborative learning groups, considering the students’ personality traits as grouping criteria. A controlled experiment was designed with 238 students, quantifying their personality traits through the “big five inventory” (BFI), forming working groups and developing a collaborative activity in programming and related courses. The experiment results allowed validation, not only from a computational point of view evaluating the algorithm performance but also from a pedagogical point of view, confronting the results obtained by students applying the proposed approach with those obtained through other group formation strategies. The highlight of the study is that those groups whose formation was pre-established by the teachers through the proposed strategy have generally had a better collaborative performance than the groups with traditional formation, except in the case of heterogeneous formation, at the time of developing a collaborative activity. In addition, through the experiment, it was found that not considering criteria related to personality traits before the group formation generally led to lower results.
topic collaborative learning
collaborative performance
genetic algorithms
group formation
personality traits
url https://www.mdpi.com/2079-9292/10/4/463
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