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New cluster-validity for fuzzy clustering

机译:模糊聚类的新聚类有效性

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摘要

Fuzzy cluster-validity criterion tends to evaluate the quality of fuzzy c-partitions produced by fuzzy clustering algorithms. Many functions have been proposed. Some methods use only the properties of fuzzy membership degrees to evaluate partitions. Others techniques combine the properties of membership degrees and the structure of data. In this paper a new heuristic method is based on the combination of two functions. The search of good clustering is measured by a fuzzy compactness-separation ratio. The first function calculates this ratio by considering geometrical properties and membership degrees of data. The second function evaluates it by using only the properties of membership degrees. Four numerical examples are used to illustrate its use as a validity functional. Its effectiveness is compared to some existing cluster-validity criterion.
机译:模糊聚类有效性准则倾向于评估由模糊聚类算法产生的模糊c分区的质量。已经提出了许多功能。一些方法仅使用模糊隶属度的属性来评估分区。其他技术结合了隶属度的属性和数据的结构。在本文中,一种新的启发式方法是基于两个函数的组合。良好聚类的搜索是通过模糊紧密度-比率来衡量的。第一个函数通过考虑几何特性和数据隶属度来计算该比率。第二个函数通过仅使用隶属度的属性对其进行评估。使用四个数值示例来说明其用作有效性函数。将其有效性与一些现有的聚类有效性标准进行比较。

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