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Clustering categorical data sets using tabu search techniques

机译:使用禁忌搜索技术对分类数据集进行聚类

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Clustering methods partition a set of objects into clusters such that objects in the same cluster are more similar to each other than objects in different clusters according to some defined criteria. The fuzzy k-means-type algorithm is best suited for implementing this clustering operation because of its effectiveness in clustering data sets. However, working only on numeric values limits its use because data sets often contain categorical values. In this paper, we present a tabu search based clustering algorithm, to extend the k-means paradigm to categorical domains, and domains with both numeric and categorical values. Using tabu search based techniques, our algorithm can explore the solution space beyond local optimality in order to aim at finding a global solution of the fuzzy clustering problem. It is found that the clustering results produced by the proposed algorithm are very high in accuracy. (C) 2002 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 14]
机译:聚类方法将一组对象划分为多个聚类,以便根据某些定义的标准,同一聚类中的对象比不同聚类中的对象彼此更相似。模糊k均值类型算法因其在聚类数据集中的有效性而最适合于执行此聚类操作。但是,仅处理数字值会限制其使用,因为数据集通常包含分类值。在本文中,我们提出一种基于禁忌搜索的聚类算法,以将k-means范式扩展到分类域以及具有数值和分类值的域。使用基于禁忌搜索的技术,我们的算法可以探索局部最优之外的解空间,从而旨在寻找模糊聚类问题的全局解。发现该算法产生的聚类结果精度很高。 (C)2002模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:14]

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