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Synthesis of probabilistic fuzzy classifiers using GK clustering and Bayesian estimation

机译:基于GK聚类和贝叶斯估计的概率模糊分类器综合。

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摘要

The paper presents an automatic rule-base design of probabilistic fuzzy systems developed for classification tasks. The objective here is to present a methodology that allows the user to obtain a fuzzy classifier directly from training data, in which rules' antecedents are defined on the basis of clustering techniques and probabilistic consequents allow the presence of all classes in the same individual rule, each class associated with a measure of probability. The probability measure is calculated based on Bayes' theorem using an ideal region of the rule to update a priori information. The clustering process which supports the automatic partition of the input universe is based on the Gustafson-Kessel algorithm and is associated with a principal component analysis to reduce the dimensionality of the input data, improving this way the interpretability of the resulting classifier. The proposed approach is applied to Wine, Wisconsin breast cancer, Sonar e Ionosphere data sets. Results are compared with those of two other classifiers and show that the proposed approach can be an alternative to automatically set antecedents and consequents of probabilistic fuzzy classifiers.
机译:本文提出了针对分类任务开发的概率模糊系统的自动规则库设计。此处的目的是提出一种方法,该方法允许用户直接从训练数据中获得模糊分类器,其中基于聚类技术定义规则的前提,概率结果允许所有类都出现在同一条单独规则中,每个类别都与一个概率度量相关。基于贝叶斯定理,使用规则的理想区域来更新先验信息来计算概率测度。支持输入Universe的自动分区的聚类过程基于Gustafson-Kessel算法,并与主成分分析相关联,以减少输入数据的维数,从而提高了所得分类器的可解释性。所提出的方法适用于Wine,威斯康星州的乳腺癌,Sonar e电离层数据集。将结果与其他两个分类器的结果进行比较,结果表明,所提出的方法可以替代自动设置概率模糊分类器的先因和结果。

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