GA-based optimisation of fuzzy rule bases for pattern classification

G. Schaefer
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引用次数: 1

Abstract

Many decision making problems can be formulated as pattern classification problems. Therefore, high performing classification algorithms are highly sought after. Rule based pattern classification algorithms have an advantage that they do not appear to the user just as a “black box” but may provide additional insight based on the generated rules. In this paper, we focus on fuzzy rule based approaches which employ concepts from fuzzy logic theory to encode input patterns in a non-binary way. Starting with a basic fuzzy classifier we show that, through a simple modification, it can be turned into a cost sensitive classification method, and that classification performance can be improved through an error correction learning approach. Importantly, since rule-based classifiers are prone to rule explosion, we then show that a compact yet powerful rule base can be generated through an optimisation approach based on genetic algorithms.
基于遗传算法的模式分类模糊规则库优化
许多决策问题都可以表述为模式分类问题。因此,高性能的分类算法备受追捧。基于规则的模式分类算法有一个优点,即它们对用户来说不只是一个“黑盒”,而是可以根据生成的规则提供额外的见解。本文主要研究基于模糊规则的方法,该方法利用模糊逻辑理论中的概念以非二进制的方式对输入模式进行编码。从一个基本的模糊分类器开始,我们表明,通过简单的修改,它可以变成一个代价敏感的分类方法,并且可以通过纠错学习方法提高分类性能。重要的是,由于基于规则的分类器容易发生规则爆炸,我们随后展示了可以通过基于遗传算法的优化方法生成紧凑而强大的规则库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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