A Novel Data Mining Algorithm for Web-Based Learning Community

Yi Jiang, Wei Huang, Qingling Yue
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引用次数: 0

Abstract

Web-based learning community allow educators to study how students learn (descriptive studies) and which learning strategies are most effective (causal/predictive studies).Since web-based learning community are capable of collecting vast amounts of student profile data, data mining and knowledge discovery techniques can be applied to find interesting relationships between attributes of students, assessments, and the solution strategies adopted by students. In this paper, we propose a new coevolutionary algorithm for the discovery of interesting association rules within a web-based learning community. Three coevolutionary operators are designed and the mining algorithm is realized in this paper. According to experimentation, the algorithm has been found suitable for association rule mining of the web-based learning community.
一种新的基于web的学习社区数据挖掘算法
基于网络的学习社区允许教育者研究学生如何学习(描述性研究)以及哪种学习策略最有效(因果/预测研究)。由于基于web的学习社区能够收集大量的学生档案数据,因此可以应用数据挖掘和知识发现技术来发现学生属性、评估和学生采用的解决方案策略之间的有趣关系。在本文中,我们提出了一种新的协同进化算法,用于在基于web的学习社区中发现有趣的关联规则。设计了三种协同进化算子,实现了挖掘算法。实验表明,该算法适用于基于web的学习社区的关联规则挖掘。
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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