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A genetic algorithm approach for group formation in collaborative learning considering multiple student characteristics

机译:考虑多个学生特征的协作学习中群体形成的遗传算法

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摘要

Considering that group formation is one of the key processes in collaborative learning, the aim of this paper is to propose a method based on a genetic algorithm approach for achieving inter-homogeneous and intra-heterogeneous groups. The main feature of such a method is that it allows for the consideration of as many student characteristics as may be desired, translating the grouping problem into one of multi-objective optimization. In order to validate our approach, an experiment was designed with 135 college freshmen considering three characteristics: an estimate of student knowledge levels, an estimate of student communicative skills, and an estimate of student leadership skills. Results of such an experiment allowed for the validation, not only from the computational point of view by measuring the algorithmic performance, but also from the pedagogical point of view by measuring student outcomes, and comparing them with two traditional group formation strategies: random and self-organized.
机译:考虑到组的形成是协作学习的关键过程之一,本文的目的是提出一种基于遗传算法的方法来实现同质和异质组。这种方法的主要特征是,它允许考虑可能需要的尽可能多的学生特征,从而将分组问题转化为多目标优化之一。为了验证我们的方法,设计了一个针对135名大学新生的实验,该实验考虑了以下三个特征:对学生知识水平的评估,对学生沟通能力的评估和对学生领导能力的评估。这种实验的结果不仅可以通过计算算法性能的测量来进行验证,而且可以通过测量学生成果并将其与两种传统的小组形成策略进行比较的教学方法来进行验证:随机和自我-组织。

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