Fuzzy classifier design using genetic algorithms

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摘要

A new method for design of a fuzzy-rule-based classifier using genetic algorithms (GAs) is discussed. The optimal parameters of the fuzzy classifier including fuzzy membership functions and the size and structure of fuzzy rules are extracted from the training data using GAs. This is done by introducing new representation schemes for fuzzy membership functions and fuzzy rules. An effectiveness measure for fuzzy rules is developed that allows for systematic addition or deletion of rules during the GA optimization process. A clustering method is utilized for generating new rules to be added when additions are required. The performance of the classifier is tested on two real-world databases (Iris and Wine) and a simulated Gaussian database. The results indicate that highly accurate classifiers could be designed with relatively few fuzzy rules. The performance is also compared to other fuzzy classifiers tested on the same databases.

论文关键词:Fuzzy classifier,Genetic algorithms,Optimization of fuzzy parameters,Fuzzy rule extraction,Pattern classification

论文评审过程:Received 7 February 2006, Revised 28 February 2007, Accepted 27 March 2007, Available online 19 April 2007.

论文官网地址:https://doi.org/10.1016/j.patcog.2007.03.028