A comparative study on cluster validity criteria in linear fuzzy clustering and pareto optimality analysis

Katsuhiro Honda, Tomonari Nomaguchi, A. Notsu, H. Ichihashi
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Abstract

Cluster validation is an important issue in cluster analysis. In this paper, a comparative study on validity criteria is performed with linear fuzzy clustering that can be identified with a local PCA technique. Besides the standard fuzzification approach, the entropy regularization approach is responsible for fuzzification of data partition and the approach implies a close relation between FCM-type linear fuzzy clustering and probabilistic PCA models. This comparative study reveals mutual differences between two fuzzification approaches from the view point of cluster validation using several cluster validity criteria. Additional characteristics are shown in a pareto analysis, in which the effect of noise sensitivity is also discussed.
线性模糊聚类与pareto最优分析中聚类有效性准则的比较研究
聚类验证是聚类分析中的一个重要问题。本文采用局部主成分分析技术,对线性模糊聚类的有效性标准进行了比较研究。除了标准的模糊化方法外,熵正则化方法还负责数据分区的模糊化,该方法暗示了fcm型线性模糊聚类与概率PCA模型之间的密切关系。这一比较研究揭示了两种模糊化方法之间的相互差异,从使用几个聚类效度标准的聚类验证的角度来看。在帕累托分析中显示了其他特性,其中也讨论了噪声灵敏度的影响。
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