A survey of kernel and spectral methods for clustering

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摘要

Clustering algorithms are a useful tool to explore data structures and have been employed in many disciplines. The focus of this paper is the partitioning clustering problem with a special interest in two recent approaches: kernel and spectral methods. The aim of this paper is to present a survey of kernel and spectral clustering methods, two approaches able to produce nonlinear separating hypersurfaces between clusters. The presented kernel clustering methods are the kernel version of many classical clustering algorithms, e.g., K-means, SOM and neural gas. Spectral clustering arise from concepts in spectral graph theory and the clustering problem is configured as a graph cut problem where an appropriate objective function has to be optimized. An explicit proof of the fact that these two paradigms have the same objective is reported since it has been proven that these two seemingly different approaches have the same mathematical foundation. Besides, fuzzy kernel clustering methods are presented as extensions of kernel K-means clustering algorithm.

论文关键词:Partitional clustering,Mercer kernels,Kernel clustering,Kernel fuzzy clustering,Spectral clustering

论文评审过程:Received 19 October 2006, Revised 30 April 2007, Accepted 29 May 2007, Available online 19 June 2007.

论文官网地址:https://doi.org/10.1016/j.patcog.2007.05.018