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RESAMPLING FOR FUZZY CLUSTERING

机译:重新采样以进行模糊聚类

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摘要

Resampling methods are among the best approaches to determine the number of clusters in prototype-based clustering. The core idea is that with the right choice for the number of clusters basically the same cluster structures should be obtained from subsamples of the given data set, while a wrong choice should produce considerably varying cluster structures. In this paper I give an overview how such resampling approaches can be transferred to fuzzy and probabilistic clustering. I study several cluster comparison measures, which can be parameterized with i-norms, and report experiments that provide some guidance which of them may be the best choice.
机译:重采样方法是确定基于原型的聚类中聚类数量的最佳方法之一。核心思想是,如果选择正确的聚类数量,则应该从给定数据集的子样本中基本上获得相同的聚类结构,而错误的选择会产生相当不同的聚类结构。在本文中,我概述了如何将这种重采样方法转移到模糊和概率聚类中。我研究了几种聚类比较度量(可以使用i范数进行参数化),并报告了提供一些指导的实验,其中哪些可能是最佳选择。

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