ttribute Value Weighting in K-Modes Clustering
ttribute Value Weighting in K-Modes Clustering
In this paper, the traditional k-modes clustering algorithm is extended by weighting attribute value matches in dissimilarity computation. The use of attribute value weighting technique makes it possible to generate clusters with stronger intra-similarities, and therefore achieve better clustering performance. Experimental results on real life datasets show that these value weighting based k-modes algorithms are superior to the standard k-modes algorithm with respect to clustering accuracy.
In this paper, the traditional k-modes clustering algorithm is extended by weighting attribute value matches in dissimilarity computation. The use of attribute value weighting technique makes it possible to generate clusters with stronger intra-similarities, and therefore achieve better clustering performance. Experimental results on real life datasets show that these value weighting based k-modes algorithms are superior to the standard k-modes algorithm with respect to clustering accuracy.
何增友
计算技术、计算机技术
lustering Categorical Data K-Means K-Modes Data Mining
lustering Categorical Data K-Means K-Modes Data Mining
何增友.ttribute Value Weighting in K-Modes Clustering[EB/OL].(2007-01-12)[2025-08-02].http://www.paper.edu.cn/releasepaper/content/200701-150.点此复制
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