Relation between Pareto-Optimal Fuzzy Rules and Pareto-Optimal Fuzzy Rule Sets

H. Ishibuchi, I. Kuwajima, Y. Nojima
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引用次数: 21

Abstract

Evolutionary multiobjective optimization (EMO) has been utilized in the field of data mining in the following two ways: to find Pareto-optimal rules and Pareto-optimal rule sets. Confidence and coverage are often used as two objectives to evaluate each rule in the search for Pareto-optimal rules. Whereas all association rules satisfying the minimum support and confidence are usually extracted in data mining, only Pareto-optimal rules are searched for by an EMO algorithm in multiobjective data mining. On the other hand, accuracy and complexity are used to evaluate each rule set. The complexity of each rule set is often measured by the number of rules and the number of antecedent conditions. An EMO algorithm is used to search for Pareto-optimal rule sets with respect to accuracy and complexity. In this paper, we examine the relation between Pareto-optimal rules and Pareto-optimal rule sets in the design of fuzzy rule-based systems for pattern classification problems. More specifically, we check whether Pareto-optimal rules are included in Pareto-optimal rule sets through computational experiments using multiobjective genetic fuzzy rule selection. A mixture of Pareto-optimal and non Pareto-optimal fuzzy rules are used as candidate rules in multiobjective genetic fuzzy rule selection. We also examine the performance of selected rules when we use only Pareto-optimal rules as candidate rules
帕累托最优模糊规则与帕累托最优模糊规则集的关系
进化多目标优化(EMO)在数据挖掘领域的应用主要有两种:寻找pareto最优规则和pareto最优规则集。在寻找帕累托最优规则时,置信度和覆盖率通常被用作评估每个规则的两个目标。在数据挖掘中,通常提取所有满足最小支持度和置信度的关联规则,而在多目标数据挖掘中,EMO算法只搜索帕累托最优规则。另一方面,准确性和复杂性用于评估每个规则集。每个规则集的复杂性通常通过规则的数量和前置条件的数量来衡量。利用EMO算法搜索精度和复杂度较高的pareto最优规则集。本文研究了基于模糊规则的模式分类系统设计中帕累托最优规则和帕累托最优规则集之间的关系。更具体地说,我们通过多目标遗传模糊规则选择的计算实验来检验帕累托最优规则是否包含在帕累托最优规则集中。在多目标遗传模糊规则选择中,混合使用帕累托最优和非帕累托最优模糊规则作为候选规则。当我们只使用帕累托最优规则作为候选规则时,我们还检查了所选规则的性能
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