基于模糊启发粒子群算法的网络学习学习者分组改进

Fatemeh Ghorbani, G. Montazer
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引用次数: 9

摘要

最近技术的进步和这些进步在教学设计中的整合导致了大规模的个性化,即同时向大量学习者提供个性化的教学。使教学适应学习者群体的第一步是学习者分组。在电子学习环境中对学习者进行分组的方法有很多,特别是聚类方法等数据挖掘技术。本文旨在提出一种基于认知风格的聚类方法,利用学习者在系统工作中某些特定的可观察行为对学习者进行分组。该方法通过考虑衡量聚类优度的两个准则——紧密度和分离度来定义目标函数,并采用粒子群算法对目标函数进行优化。这种方法基于认知风格对学习者进行分组。采用Davies-Bouldin聚类效度指数将所提方法与K-means、模糊C-means和EFC方法进行了比较,并比较了同一组中学习者的认知风格和获得的分组结果,结果表明,采用模糊启发PSO方法的分组准确率较高,并且该方法具有较好的聚类性能,将相似的学习者聚在一个聚类中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learners grouping improvement in e-learning environment using fuzzy inspired PSO method
Recent advances in technology and the integration of these advances in instructional design have led to a mass individualization where personalized instruction is offered simultaneously to large groups of learners. The first step to adapt instruction to group of learners is learners grouping. Many methods have used to group learners in e-learning environment specially data mining techniques such as clustering methods. This paper aims to propose a clustering method to group learners using some specific learners' observable behavior while working by system and based on cognitive style. The objective function of proposed method is defined by considering two criteria in measuring the clustering goodness, compactness and separation, and Particle Swarm Optimization (PSO) method is used to optimize the objective function. This method used to group learners based on cognitive style. Results of the proposed method are compared with K-means, fuzzy C-means, and EFC methods using Davies-Bouldin cluster validity index and comparing the achieved groups and the cognitive style of learners who are in the same group, shows that the grouping accuracy is in a higher level using fuzzy-inspired PSO method and this method has the better clustering performance than the others and groups similar learners in one cluster.
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