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Tradeoff between the performance of fuzzy rule-based classification systems and the number of fuzzy if-then rules

机译:基于模糊规则的分类系统的性能与模糊IF-DEN-THEA规则的数量之间的权衡

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The main aim of this paper is to illustrate the tradeoff between the performance of a fuzzy rule-based classification system and its size (i.e., the number of fuzzy if-then rules) through computer simulations on commonly used data sets. In ourcomputer simulations, we use a simple heuristic method for generating fuzzy if-then rules from training patterns, in which a pattern space is homogeneously partitioned into fuzzy subspaces by subdividing each axis into linguistic values. For clearlyillustrating the tradeoff we use a genetic-algorithm-based rule selection method with two objectives. to minimize the number of fuzzy f-then rules and to maximize the classification performance. Various fuzzy rule-based classification Systems withdifferent sizes are generated by the rule selection method for each data set.
机译:本文的主要目的是说明通过常用数据集的计算机模拟的基于模糊规则的分类系统及其大小(即,模糊If-Dent规则的数量)之间的折衷。在计算机模拟中,我们使用简单的启发式方法来从训练模式生成模糊IF-DOT规则,其中通过将每个轴细分为语言值,通过将图案空间均匀地划分为模糊子空间。对于简单的解释权衡,我们使用具有两个目标的基于遗传算法的规则选择方法。最小化模糊F-DEN规则的数量并最大限度地提高分类性能。具有各种大小的基于模糊规则的分类系统由每个数据集的规则选择方法生成。

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