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Performance evaluation of fuzzy rule-based classification systems obtained by multi-objective genetic algorithms

✍ Scribed by Hisao Ishibuchi; Tadahiko Murata; Mitsuo Gen


Publisher
Elsevier Science
Year
1998
Tongue
English
Weight
279 KB
Volume
35
Category
Article
ISSN
0360-8352

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✦ Synopsis


In this paper, we examine the classification performance of fuzzy if-then rules selected by a GA-based multi-objective rule selection method. This rule selection method can be applied to high-dimensional pattern classification problems with many continuous attributes by restricting the number of antecedent conditions of each candidate fuzzy if-then rule. As candidate rules, we only use fuzzy if-then rules with a small number of antecedent conditions. Thus it is easy for human users to understand each rule selected by our method. Our rule selection method has two objectives: to minimize the number of selected fuzzy if-then rules and to maximize the number of correctly classified patterns. In our multi-objective fuzzy rule selection problem, there exist several solutions (i.e., several rule sets) called "non-dominated solutions" because two conflicting objectives are considered. In this paper, we examine the performance of our GAbased rule selection method by computer simulations on a real-world pattern classification problem with many continuous attributes. First we examine the classification performance of our method for training patterns by computer simulations. Next we examine the generalization ability for test patterns. We show that a fuzzy rule-based classification system with an appropriate number of rules has high generalization ability.


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Fuzzy rule selection by multi-objective
✍ Hisao Ishibuchi; Takashi Yamamoto 📂 Article 📅 2004 🏛 Elsevier Science 🌐 English ⚖ 365 KB

This paper shows how a small number of simple fuzzy if-then rules can be selected for pattern classiÿcation problems with many continuous attributes. Our approach consists of two phases: candidate rule generation by rule evaluation measures in data mining and rule selection by multi-objective evolut