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Cluster validity measure and merging system for hierarchical clustering considering outliers

机译:考虑离群值的层次聚类的聚类有效性度量和合并系统

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摘要

Clustering algorithms have evolved to handle more and more complex structures. However, the measures that allow to qualify the quality of such clustering partitions are rare and have been developed only for specific algorithms. In this work, we propose a new cluster validity measure (CVM) to quantify the clustering performance of hierarchical algorithms that handle overlapping clusters of any shape and in the presence of outliers. This work also introduces a cluster merging system (CMS) to group clusters that share outliers. When located in regions of cluster overlap, these outliers may be issued by a mixture of nearby cores. The proposed CVM and CMS are applied to hierarchical extensions of the Support Vector and Gaussian Process Clustering algorithms both in synthetic and real experiments. These results show that the proposed metrics help to select the appropriate level of hierarchy and the appropriate hyperparameters. (C) 2014 Elsevier Ltd. All rights reserved.
机译:聚类算法已经发展为可以处理越来越复杂的结构。但是,允许限定此类聚类分区质量的措施很少,并且仅针对特定算法而开发。在这项工作中,我们提出了一种新的聚类有效性度量(CVM),以量化处理任何形状且存在异常值的重叠聚类的分层算法的聚类性能。这项工作还引入了群集合并系统(CMS)来对共享异常值的群集进行分组。当位于簇重叠区域时,这些异常值可能是由附近岩心的混合引起的。拟议的CVM和CMS在合成和实际实验中均应用于支持向量和高斯过程聚类算法的分层扩展。这些结果表明,提出的度量标准有助于选择适当的层次结构级别和适当的超参数。 (C)2014 Elsevier Ltd.保留所有权利。

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