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DenPEHC: Density peak based efficient hierarchical clustering
Xu, Ji1,2,4; Wang, Guoyin3; Deng, Weihui2
2016-12-10
摘要

Existing hierarchical clustering algorithms involve a flat clustering component and an additional agglomerative or divisive procedure. This paper presents a density peak based hierarchical clustering method (DenPEHC), which directly generates clusters on each possible clustering layer, and introduces a grid granulation framework to enable DenPEHC to cluster large-scale and high-dimensional (LSHD) datasets. This study consists of three parts: (1) utilizing the distribution of the parameter gamma, which is defined as the product of the local density rho and the minimal distance to data points with higher density delta in "clustering by fast search and find of density peaks" (DPClust), and a linear fitting approach to select clustering centers with the clustering hierarchy decided by finding the "stairs" in the gamma curve; (2) analyzing the leading tree (in which each node except the root is led by its parent to join the same cluster) as an intermediate result of DPClust, and constructing the clustering hierarchy efficiently based on the tree; and (3) designing a framework to enable DenPEHC to cluster LSHD datasets when a large number of attributes can be grouped by their semantics. The proposed method builds the clustering hierarchy by simply disconnecting the center points from their parents with a linear computational complexity 0(m), where m is the number of clusters. Experiments on synthetic and real datasets show that the proposed method has promising efficiency, accuracy and robustness compared to state-of-the-art methods. (C) 2016 Elsevier Inc. All rights reserved.

关键词Hierarchical Clustering Density Peaks Grid Granulation Granular Computing
DOI10.1016/j.ins.2016.08.086
发表期刊INFORMATION SCIENCES
ISSN0020-0255
卷号373页码:200-218
收录类别SCI
WOS记录号WOS:000385470400012
语种英语