GA-based optimization of fuzzy rule bases for pattern classification

G. Schaefer
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Abstract

Many problems can be cast as pattern classification problems. Consequently, developing effective classifiers has become an important research area. Various techniques have been proposed to produce classifiers, however many of these appear to the user as “black boxes” which merely give a decision without any additional insight. In this lecture, the focus will be on fuzzy rule-based classification systems which generate simple if-then rules that can thus also be interpreted by the user. Since rule-based classifiers are prone to rule explosion, It will be presented, in particular, optimization approaches to rule base generation that are based on genetic algorithms and a shown to result in a compact yet effective set of rules. In addition, through a simple modification, the resulting classifier can be made cost-sensitive which is in particular useful for applications in medical diagnosis. Example applications will include the classification of gene expression data and the use of classifiers for breast cancer diagnosis.
基于遗传算法的模式分类模糊规则库优化
许多问题都可以归结为模式分类问题。因此,开发有效的分类器已成为一个重要的研究领域。已经提出了各种各样的技术来产生分类器,然而,其中许多对用户来说似乎是“黑盒”,仅仅给出一个决定,而没有任何额外的见解。在本讲座中,重点将放在基于模糊规则的分类系统上,它生成简单的if-then规则,因此也可以被用户解释。由于基于规则的分类器容易产生规则爆炸,因此将特别介绍基于遗传算法的规则库生成的优化方法,并证明该方法可以生成紧凑但有效的规则集。此外,通过简单的修改,所得到的分类器可以使成本敏感,这对医疗诊断的应用特别有用。示例应用将包括基因表达数据的分类和使用乳腺癌诊断的分类器。
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