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A general framework for designing a fuzzy rule-based classifier

机译:设计基于模糊规则的分类器的通用框架

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This paper presents a general framework for designing a fuzzy rule-based classifier. Structure and parameters of the classifier are evolved through a two-stage genetic search. To reduce the search space, the classifier structure is constrained by a tree created using the evolving SOM tree algorithm. Salient input variables are specific for each fuzzy rule and are found during the genetic search process. It is shown through computer simulations of four real world problems that a large number of rules and input variables can be eliminated from the model without deteriorating the classification accuracy. By contrast, the classification accuracy of unseen data is increased due to the elimination.
机译:本文提出了一种用于设计基于模糊规则的分类器的通用框架。分类器的结构和参数是通过两阶段遗传搜索来演化的。为了减少搜索空间,分类器结构受到使用演化SOM树算法创建的树的约束。显式输入变量是每个模糊规则的特定变量,可以在遗传搜索过程中找到。通过对四个实际问题的计算机模拟,可以从模型中消除大量规则和输入变量,而不会降低分类精度。相比之下,由于消除了看不见的数据的分类精度,因此提高了。

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