k指定的清晰数据聚类算法的备选终止准则

V. Mosorov, T. Panskyi, S. Biedroń
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引用次数: 0

摘要

本文分析了k指定(即k-means)的清晰数据分区预聚类算法的终止准则性能。采用聚类效度指标对结果进行了分析。终止条件允许使用任意数量的集群分析数据。此外,引入的标准与已知的有效性指标相比,可以分析组成一个簇的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ALTERNATIVE TERMINATION CRITERION FOR K-SPECIFIED CRISP DATA CLUSTERING ALGORITHMS
In this paper the analysis of k-specified (namely k-means) crisp data partitioning pre-clustering algorithm’s termination criterion performance is described. The results have been analyzed using the clustering validity indices. Termination criterion allows analyzing data with any number of clusters. Moreover, introduced criterion in contrast to the known validity indices enables to analyze data that make up one cluster.
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