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A Method of Two-Stage Clustering Based on Cluster Validity Measures

机译:基于聚类有效性测度的两阶段聚类方法

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摘要

Two-stage clustering is constructed from generating stage and merging one. To handle a large scale of objects, an algorithm of the two-stage clustering generates a large number of clusters in the first stage and merge clusters in the second stage. A novel two-stage clustering method is proposed by introducing cluster validity measures which are used to evaluate cluster partition and determine the suitable number of clusters. The significant cluster validity measure is used in the second stage and play a role as criterion to merge clusters. The performance of the proposed method are compared with six artificial datasets and three benchmark datasets. These experiments show that several cluster validity measures, that is, trace of fuzzy covariance matrix and membership degrees based indices are effective in the proposed method and obtain better results than other indices.
机译:从生成阶段和合并阶段开始,构建两阶段聚类。为了处理大量对象,两阶段聚类算法在第一阶段生成大量聚类,并在第二阶段合并聚类。通过引入聚类有效性度量,提出了一种新颖的两阶段聚类方法,该度量用于评估聚类划分并确定合适的聚类数量。重要的聚类有效性度量在第二阶段中使用,并作为合并聚类的标准。将该方法的性能与六个人工数据集和三个基准数据集进行了比较。这些实验表明,所提出的几种聚类有效性度量方法,即基于模糊协方差矩阵的跟踪和基于隶属度的指标,是有效的,并且比其他指标获得更好的结果。

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