Group Formation Using Multi Objectives Ant Colony System for Collaborative Learning

F. Z. Fahmi, Dade Nurjanah
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引用次数: 6

Abstract

Collaborative learning is widely applied in education. One of the key aspects of collaborative learning is group formation. A challenge in group formation is to determine appropriate attributes and attribute types to gain good group results. This paper studies the use of an improved ant colony system (ACS), called Multi Objective Ant Colony System (MOACS), for group formation. Unlike ACS that transforms all attribute values into a single value, thus making any attributes are not optimally worth, MOACS tries to gain optimal values of all attributes simultaneously. MOACS is designed for various combinations of attributes and can be used for homogeneous, heterogeneous or mixed attributes. In this paper, sensing/intuitive learning styles (LSSI) and interests in subjects (I) are used in homogeneous group formation, while active/reflective learning style (LSAR) and previous knowledge (KL) are used for heterogeneous or mixed group formation. Experiments were conducted for measuring the average goodness of attributes (avgGA) and standard deviation of goodness of attributes (stdGA). The objectives of MOACS for homogeneous attributes were minimum avgGA and stdGA, while those for heterogeneous attributes were maximum avgGA and minimum stdGA. As a conclusion, MOACS was appropriate for group formation with homogeneous or mixed.
基于多目标蚁群系统的群体形成协同学习
协作学习在教育中有着广泛的应用。协作学习的一个关键方面是小组形成。如何确定适当的属性和属性类型以获得良好的组结果是组形成中的一个挑战。本文研究了一种改进的蚁群系统(ACS),称为多目标蚁群系统(MOACS),用于群体形成。与ACS将所有属性值转换为单个值,从而使任何属性都不具有最优值不同,MOACS试图同时获得所有属性的最优值。MOACS是为各种属性组合而设计的,可用于同质、异构或混合属性。在本文中,感知/直觉学习风格(LSSI)和对学科的兴趣(I)用于同质群体的形成,而主动/反思性学习风格(LSAR)和先前知识(KL)用于异质或混合群体的形成。对平均属性优度(avgGA)和属性优度标准差(stdGA)进行了测量实验。均匀属性MOACS的目标是最小avgGA和标准ga,而异构属性MOACS的目标是最大avgGA和最小标准ga。综上所述,MOACS适合于均匀或混合的基团形成。
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