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Visual hierarchical cluster structure: A refined co-association matrix based visual assessment of cluster tendency

机译:视觉层次集群结构:基于精细关联矩阵的集群趋势视觉评估

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摘要

A hierarchical clustering algorithm, such as Single-linkage, can depict the hierarchical relationship of clusters, but its clustering quality mainly depends on the similarity measure used. Visual assessment of cluster tendency (VAT) reorders a similarity matrix to reveal the cluster structure of a data set, and a VAT-based clustering discovers clusters by image segmentation techniques. Although VAT can visually present the cluster structure, its performance also relies on the similarity matrix employed. In this paper, we take a refined co-association matrix, which is originally used in ensemble clustering, as an initial similarity matrix and transform it by path-based measure, and then apply it to VAT. The final clustering is achieved by directly analyzing the transformed and reordered similarity matrix. The proposed method can deal with data sets with some complex cluster structures and reveal the relationship of clusters hierarchically. The experimental results on synthetic and real data sets demonstrate the above mentioned properties. (C) 2015 Elsevier B.V. All rights reserved.
机译:诸如单链接之类的分层聚类算法可以描述聚类的层次关系,但是其聚类质量主要取决于所使用的相似性度量。聚类趋势(VAT)的视觉评估对相似性矩阵进行重新排序,以揭示数据集的聚类结构,而基于VAT的聚类则通过图像分割技术发现了聚类。尽管增值税可以从视觉上呈现群集结构,但其性能还取决于所采用的相似度矩阵。在本文中,我们将最初用于集成聚类的精炼协关联矩阵作为初始相似矩阵,并通过基于路径的度量对其进行转换,然后将其应用于增值税。通过直接分析经过变换和重新排序的相似性矩阵,可以实现最终的聚类。所提出的方法可以处理具有某些复杂聚类结构的数据集,并分层显示聚类之间的关系。综合和真实数据集的实验结果证明了上述特性。 (C)2015 Elsevier B.V.保留所有权利。

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