Educational Group Formation Problem Resolution Based on an Improved Swarm Particle Optimization Using Fuzzy Knowledge

Bikhtiyar Hasan, A. Boufaied
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Abstract

In educational context, instructors usually partition students into collaborative learning teams to perform collaborative learning tasks. Indeed, one of the grouping criteria most utilized by instructors is based on the students’ roles and on forming similar teams according to the roles of their members which is costly and complex. In this paper, we address the optimization problem of forming automatically learning teams by minimizing the knowledge-difference cost among formed teams. The knowledge index of each group depends on the Belbin roles of their students’ members in the form of a sum of students’ fuzzy rating indexes. The proposed algorithm is called improved particle swarm optimization with multi-parent order crossover (IPSOMPOX). The multi-parent order crossover is used in IPSOMPOX in order to investigate new solutions in the search space and to accelerate the convergence of the proposed algorithm to the best global solution. To evaluate the performance of the proposed algorithm, we apply it on several different experiments with different numbers of teams and students. The proposed algorithm is compared with the standard PSO and has proved better performance are shown in our results.
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基于改进的模糊知识群粒子优化的教育群体形成问题求解
在教育环境中,教师通常将学生划分为协作学习小组,执行协作学习任务。事实上,教师最常用的分组标准之一是根据学生的角色和根据其成员的角色组成类似的团队,这是昂贵和复杂的。本文通过最小化已形成团队之间的知识差异成本来解决自动学习团队的优化问题。每个小组的知识指数取决于其学生成员的Belbin角色,以学生模糊评分指标的总和的形式存在。该算法称为改进的多父级交叉粒子群优化算法(IPSOMPOX)。为了在搜索空间中探索新的解,加速算法收敛到全局最优解,在IPSOMPOX中使用了多父阶交叉。为了评估所提出的算法的性能,我们将其应用于不同数量的团队和学生的几个不同实验中。将该算法与标准粒子群算法进行了比较,结果表明该算法具有更好的性能。
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