Rock: A Robust Clustering Algorithm For Categorical Attributes

Information Systems(1999)

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摘要
We study clustering algorithms for data with boolean and categorical attributes. We show that traditional clustering algorithms that use distances between points for clustering are not appropriate for boolean and categorical attributes. Instead, We propose a novel concept of kinks to measure the similarity/proximity between a pair of data points. We develop a robust hierarchical clustering algorithm ROCK that employs links and not distances when merging clusters. Our methods naturally extend to non-metric similarity measures that are relevant in situations where a domain expert/similarity table is the only source of knowledge. In addition to presenting detailed complexity results for ROCK, we also conduct an experimental study With real-life as well as synthetic data sets. Our study shows that ROCK not only generates better quality clusters than traditional algorithms, but also exhibits good scalability properties.
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关键词
category theory,computational complexity,data handling,database management systems,pattern clustering,Boolean attributes,ROCK,categorical attributes,complexity results,data points,domain expert,non-metric similarity measures,robust clustering algorithm,robust hierarchical clustering algorithm,scalability properties,similarity table,similarity/proximity,synthetic data sets,
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