Improving e-learning communities through optimal composition of multidisciplinary learning groups

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The current study proposes an intelligent approach to compose optimal learning groups in which the members have different domain backgrounds. The approach is based on a well-known evolutionary algorithm – Particle Swarm Optimization. The authors claim that quantifying various indicators, such as background diversity and similarity between the type of interest of the participants, within a group and between groups can positively impact on building learning groups.The algorithm is integrated in an ontology-based e-learning system, designed to create self-built educating communities, in which a trainees goes through the education process, gains points through achievements and ultimately becomes a trainer. When creating a new account, the newly created trainee is asked to self asses himself by filling out a form. The resulting profile is used to assign the user to the most suitable learning group. We propose to assign him by the following rule: maximizing the diversity within a group (due to the fact that multidisciplinary teams are more challenging) and minimizing the diversity between groups (all the groups should have similar composition), meaning a group will have members with similar interests.The study is presented in the context of group building strategies in adults’ education.

论文关键词:Multidisciplinary learning groups,Particle Swarm Optimization,E-learning communities

论文评审过程:Available online 12 February 2013.

论文官网地址:https://doi.org/10.1016/j.chb.2013.01.022