On clustering tree structured data with categorical nature
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摘要
Clustering consists in partitioning a set of objects into disjoint and homogeneous clusters. For many years, clustering methods have been applied in a wide variety of disciplines and they also have been utilized in many scientific areas. Traditionally, clustering methods deal with numerical data, i.e. objects represented by a conjunction of numerical attribute values. However, nowadays commercial or scientific databases usually contain categorical data, i.e. objects represented by categorical attributes. In this paper we present a dissimilarity measure which is capable to deal with tree structured categorical data. Thus, it can be used for extending the various versions of the very popular k-means clustering algorithm to deal with such data. We discuss how such an extension can be achieved. Moreover, we empirically prove that the proposed dissimilarity measure is accurate, compared to other well-known (dis)similarity measures for categorical data.
论文关键词:Clustering,(Dis)similarity measures,Data mining
论文评审过程:Received 26 November 2005, Revised 4 May 2008, Accepted 22 May 2008, Available online 7 June 2008.
论文官网地址:https://doi.org/10.1016/j.patcog.2008.05.023