Integrating multi-objective genetic algorithms into clustering for fuzzy association rules mining

Mehmet Kaya, R. Alhajj
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引用次数: 36

Abstract

In this paper, we propose an automated method to decide on the number of fuzzy sets and for the autonomous mining of both fuzzy sets and fuzzy association rules. We compare the proposed multiobjective GA based approach with: 1) CURE based approach; 2) Chien et al. (2001) clustering approach. Experimental results on JOOK transactions extracted from the adult data of United States census in year 2000 show that the proposed method exhibits good performance over the other two approaches in terms of runtime, number of large itemsets and number of association rules.
将多目标遗传算法集成到聚类中进行模糊关联规则挖掘
在本文中,我们提出了一种自动确定模糊集数量和自动挖掘模糊集和模糊关联规则的方法。我们将所提出的基于多目标遗传算法的方法与基于CURE的方法进行了比较:2) Chien et al.(2001)聚类方法。从2000年美国人口普查成人数据中提取的JOOK事务的实验结果表明,该方法在运行时间、大项目集数量和关联规则数量方面都优于其他两种方法。
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