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Improving the performance of fuzzy classifier systems for pattern classification problems with continuous attributes

机译:改进具有连续属性的模式分类问题的模糊分类器系统的性能

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In this paper, various methods are introduced for improving the ability of fuzzy classifier systems to automatically generate fuzzy if-then rules for pattern classification problems with continuous attributes. First, we describe a simple fuzzy classifier system where a randomly generated initial population of fuzzy if-then rules is evolved by typical genetic operations, such as selection, crossover, and mutation. By computer simulations on a real-world pattern classification problem with many continuous attributes, we show that the search ability of such a simple fuzzy classifier system is not high. Next, we examine the search ability of a hybrid algorithm where a learning procedure of fuzzy if-then rules is combined with the fuzzy classifier system. Then, we introduce two heuristic procedures for improving the performance of the fuzzy classifier system. One is a heuristic rule generation procedure for an initial population where initial fuzzy if-then rules are directly generated from training patterns. The other is a heuristic population update procedure where new fuzzy if-then rules are generated from misclassified and rejected training patterns, as well as from existing fuzzy if-then rules by genetic operations. By computer simulations, we demonstrate that these two heuristic procedures drastically improve the search ability of the fuzzy classifier system. We also examine a variant of the fuzzy classifier system where the population size (i.e., the number of fuzzy if-then rules) varies depending on the classification performance of fuzzy if-then rules in the current population.
机译:本文介绍了各种方法,以提高模糊分类器系统自动生成具有连续属性的模式分类问题的模糊if-then规则的能力。首先,我们描述了一个简单的模糊分类器系统,该系统通过典型的遗传操作(例如选择,交叉和变异)来随机生成初始的模糊if-then规则种群。通过对具有许多连续属性的真实世界模式分类问题的计算机模拟,我们表明这种简单的模糊分类器系统的搜索能力不高。接下来,我们研究一种混合算法的搜索能力,该算法将模糊if-then规则的学习过程与模糊分类器系统结合在一起。然后,我们介绍了两种启发式方法来提高模糊分类器系统的性能。一种是针对初始总体的启发式规则生成过程,其中初始模糊if-then规则是直接从训练模式生成的。另一个是启发式种群更新程序,其中从错误分类和拒绝的训练模式以及通过遗传运算从现有的“模糊if-then”规则生成新的“模糊if-then”规则。通过计算机仿真,我们证明了这两个启发式程序极大地提高了模糊分类器系统的搜索能力。我们还研究了模糊分类器系统的一种变体,其中种群规模(即模糊if-then规则的数量)根据当前总体中模糊if-then规则的分类性能而变化。

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