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Forming automatic groups of learners using particle swarm optimization for applications of differentiated instruction

机译:使用粒子群优化技术为不同的教学应用形成自动学习者分组

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The aim of this paper is to present a method that uses computational intelligence techniques to classify students according to the principles of differentiated instruction. A clustering algorithm based on particle swarm optimization is applied to two sets of data emerging from the holistic assessment of the student's particular characteristics and needs. The results illustrate the algorithm's contribution to the effective formation of heterogeneous student groups, with the members of each having homogeneous characteristics of skills, difficulties, psychosocial and cognitive profiles. Thus, the teacher can easily manage students, by knowing the characteristics of each group. A comparison with a genetic algorithm as well as cuckoo search algorithm shows that the proposed method provides improved categorization capabilities.
机译:本文的目的是提出一种使用计算机智能技术根据差异化教学原理对学生进行分类的方法。基于粒子群优化的聚类算法应用于从学生的特殊特征和需求的整体评估中得​​出的两组数据。结果说明了该算法对有效组建异类学生群体的贡献,其中每个成员的技能,困难,心理社会和认知特征均具有统一特征。因此,老师可以通过了解每个小组的特征轻松地管理学生。与遗传算法和布谷鸟搜索算法的比较表明,该方法提供了改进的分类能力。

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