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CLASSIFICATION CONFIDENCE OF FUZZY RULE-BASED CLASSIFIERS

机译:基于模糊规则的分类器的分类信心

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In this paper we first introduce the concept of classification confidence in fuzzy rule-based classification. Classification confidence shows the strength of classification for an unseen pattern. Low classification confidence for an unseen pattern means that the classification of that pattern is not very clear compared to that with high classification confidence. Then we focus on the minimum classification confidence for fuzzy rule-based classifiers using the classification confidence. The minimum classification confidence represents the worst classification among given training patterns. Some discussion on assigning a weight to training pattern is given to show that cost-sensitive fuzzy rule-based classifiers are advantageous for producing a large minimum-confidence classifiers. A series of experiments are done in order to show that reasonable classification boundaries can be obtained by cost-sensitive fuzzy rule-based classifiers if appropriate weights are assigned to training patterns.
机译:在本文中,我们首先介绍了基于模糊规则的分类的分类信心的概念。分类信心显示了看不见模式的分类力量。低分类对看不见的模式的信心意味着与具有高分类信心相比,该模式的分类并不是很清楚。然后我们专注于使用分类信心的基于模糊规则的分类器的最小分类信心。最低分类信心代表给定培训模式中最严重的分类。关于为训练模式分配权重的一些讨论表明,基于成本敏感的模糊规则的分类器是有利于产生大的最小置信分类器。完成了一系列实验,以便如果将适当的权重被分配给训练模式,则可以通过基于成本敏感的模糊规则的分类器获得合理的分类边界。

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