ROCK: a robust clustering algorithm for categorical attributes

S. Guha, R. Rastogi, Kyuseok Shim
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引用次数: 2098

Abstract

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 links 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.
ROCK:一种鲁棒的分类属性聚类算法
我们研究了布尔和分类属性数据的聚类算法。我们证明了传统的聚类算法使用点之间的距离进行聚类是不适合布尔和分类属性。相反,我们提出了一种新的链接概念来衡量一对数据点之间的相似性/接近性。我们开发了一种鲁棒的分层聚类算法ROCK,它在合并聚类时使用链接而不是距离。我们的方法自然地扩展到非度量的相似性度量,这在领域专家/相似性表是唯一知识来源的情况下是相关的。除了展示ROCK的详细复杂性结果外,我们还对现实生活和合成数据集进行了实验研究。研究表明,ROCK算法不仅能生成比传统算法质量更好的聚类,而且具有良好的可扩展性。
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