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Combining Fuzzy c-Means Classifiers Using Fuzzy Majority Vote

机译:使用模糊多数票结合模糊C-Means分类器

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Although fuzzy c-Means classifier has been proved preferable to crisp ones and various types of fuzzy c-Means classifers have been designed, none of them are universal enough to perform equally well in all cases. A promising direction for more robust fuzzy c-Means classification is to derive multiple candidate fuzzy c-Means classification over a common dataset and then combine them into a consolidate one. This paper devotes to the combination of multiple fuzzy c-Means classifiers and proposes a combination method for fuzzy classifiers based on fuzzy majority voting rule, denoted by CFCM-FMV, which is tested on several real datasets. Experimental results show that the combination of fuzzy classifiers outperforms all the participant fuzzy classifiers in some cases in terms of the majority of cluster validity indexes.
机译:尽管已经证明了模糊C-Means分类器,但对于酥脆的C-Means分类器而言,并且各种类型的模糊C-Meanssifers已经设计,它们均未足以在所有情况下表现同样良好。对于更强大的模糊C-means分类的有希望的方向是通过公共数据集推导多个候选模糊C-Means分类,然后将它们组合成一个整合一个。本文致力于多模糊C-Means分类器的组合,并提出了一种基于模糊多数投票规则的模糊分类器的组合方法,由CFCM-FMV表示,该规则在几个实时数据集上进行了测试。实验结果表明,在大多数集群有效性指标方面,模糊分类器的组合在某些情况下在某些情况下表现出所有参与者模糊分类器。

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