Exploring an Approach for Grouping through Predicting Group Performance from Analysis of Learner Characteristics

Jingyun Wang, Kentaro Kojima
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Abstract

In this paper, we present a mathematical model for forming heterogeneous groups of learners under different teaching strategies. This model requires a formulation which can effectively predict the learning performance of cooperative learning groups. Therefore, we explore the correlations between learning performance and various learner characteristics including learning motivation, learning strategy use, learning styles and gender based on real-world data. By means of analyzing learner data of 157 students in a cooperative learning course, learner attributes irrelevant to cooperative learning performance are excluded from the formulation; this sharply decreases the workload of group formation calculation. In future work, a tool will be implemented based on this adjustable mathematical model and this tool will be used in daily teaching to evaluate its effectiveness.
从学习者特征分析出发,探索一种预测群体表现的分组方法
本文提出了在不同教学策略下形成异质学习者群体的数学模型。该模型需要一种能够有效预测合作学习小组学习绩效的公式。因此,我们基于现实世界的数据,探讨了学习绩效与各种学习者特征(包括学习动机、学习策略使用、学习风格和性别)之间的相关性。通过对157名合作学习学生的学习数据进行分析,排除了与合作学习绩效无关的学习者属性;这大大减少了群体编队计算的工作量。在今后的工作中,我们将基于这个可调整的数学模型实施一个工具,并将该工具用于日常教学中,以评估其有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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