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Enhanced bisecting k-means clustering using intermediate cooperation

机译:使用中间协作增强二等分k均值聚类

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摘要

Bisecting k-means (BKM) is very attractive in many applications as document-retrieval/indexing and gene expression analysis problems. However, in some scenarios when a fraction of the dataset is left behind with no other way to re-cluster it again at each level of the binary tree, a "refinement" is needed to re-cluster the resulting solutions. Current approaches to refine the Clustering Solutions produced by the BKM employ end-result enhancement using k-means (KM) Clustering. In this hybrid model, KM waits for the former BKM to finish its clustering and then it takes the final set of centroids as initial seeds for a better refinement. In this paper, a cooperative bisecting k-means (CBKM) clustering algorithm is presented. The CBKM concurrently combines the results of the BKM and KM at each level of the binary hierarchical tree using cooperative and merging matrices. Undertaken experimental results show that the CBKM achieves better clustering quality than that of KM, BKM, and single linkage (SL) algorithms with comparable time performance over a number of artificial, text documents, and gene expression datasets.
机译:由于文档检索/索引编制和基因表达分析问题,二等分k均值(BKM)在许多应用中非常有吸引力。但是,在某些情况下,如果只剩下一部分数据集而又没有其他方法可以在二叉树的每个级别上再次将其重新聚类,则需要“细化”以重新聚类所得的解决方案。改进BKM产生的聚类解决方案的当前方法采用使用k均值(KM)聚类的最终结果增强。在此混合模型中,KM等待前BKM完成聚类,然后将最后一组质心作为初始种子,以进行更好的细化。本文提出了一种协同平分k均值(CBKM)聚类算法。 CBKM使用协作矩阵和合并矩阵在二进制层次树的每个级别上同时合并BKM和KM的结果。进行的实验结果表明,在许多人工,文本文档和基因表达数据集上,CBKM比KM,BKM和单链接(SL)算法具有更好的聚类质量,并且具有可比的时间性能。

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