Application of Association Rule Mining with Concept-Effect Relationship Model for Learning Diagnosis

Sudarat Saengkeaw
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引用次数: 1

Abstract

The traditional concept-effect relationship model (CER model) aims at finding the student’s suggestion to improve personalized learning outcomes. To provide more benefits to the instructor, we apply association rule mining to searching for interesting relationships among all students’ in- class testing scores. This approach enhances instructors to better understand student learning performance and improve the instructor’s course design. The experimental results on a computer data mining course have demonstrated feasibility of the approach and the mining results provide feedback for supporting instructors in the form of strong association rules, which is found to be very useful in practical applications.
概念-效果关系模型关联规则挖掘在学习诊断中的应用
传统的概念-效果关系模型(CER模型)旨在发现学生的建议,以提高个性化的学习成果。为了给教师提供更多的好处,我们应用关联规则挖掘在所有学生的课堂测试成绩之间寻找有趣的关系。这种方法有助于教师更好地了解学生的学习表现,并改进教师的课程设计。计算机数据挖掘课程的实验结果证明了该方法的可行性,挖掘结果以强关联规则的形式反馈给辅助教师,在实际应用中非常有用。
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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