基于模糊加权多数投票规则的模糊分区组合方案

Chunsheng Li, Yao-nan Wang, H. Dai
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引用次数: 5

摘要

本文通过将加权多数投票规则推广到模糊加权多数投票规则,研究了具有相同簇数的模糊分区的组合问题。这种泛化的难点在于建立类间的对应关系和确定分量模糊划分的权重系数。我们提出了一种基于匈牙利方法的类匹配算法,并将模式识别率推广到模糊模式识别率。利用所提出的类匹配算法和模糊加权多数投票规则,提出了一种模糊分区的组合方案。在实际数据集上的实验结果表明,本文提出的模糊分区集成在大多数模糊分区评价指标上优于或可与现有的两种模糊分区集成相媲美。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Combination Scheme for Fuzzy Partitions Based on Fuzzy Weighted Majority Voting Rule
This paper devotes to the combination of fuzzy partitions with the same number of clusters by means of generalizing the weighted majority voting rule to fuzzy weighted majority voting rule. The difficulties of this generalization are to establish the correspondences among the classes and determine the weight coefficients of component fuzzy partitions. We propose a class-matching algorithm based on Hungarian method and generalize pattern recognition rate to fuzzy pattern recognition rate to overcome the difficulties. Employing the proposed class-matching algorithm and the fuzzy weighted majority voting rule, a combining scheme for fuzzy partitions is developed.Experimental results on real datasets show that the proposed ensemble of fuzzy partitions outperforms or is comparable to other two existed ensembles of fuzzy partitions in terms of most evaluation indexes for fuzzy partition.
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