Semidefinite spectral clustering

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摘要

Multi-way partitioning of an undirected weighted graph where pairwise similarities are assigned as edge weights, provides an important tool for data clustering, but is an NP-hard problem. Spectral relaxation is a popular way of relaxation, leading to spectral clustering where the clustering is performed by the eigen-decomposition of the (normalized) graph Laplacian. On the other hand, semidefinite relaxation, is an alternative way of relaxing a combinatorial optimization, leading to a convex optimization. In this paper we employ a semidefinite programming (SDP) approach to the graph equipartitioning for clustering, where sufficient conditions for strong duality hold. The method is referred to as semidefinite spectral clustering, where the clustering is based on the eigen-decomposition of the optimal feasible matrix computed by SDP. Numerical experiments with several data sets, demonstrate the useful behavior of our semidefinite spectral clustering, compared to existing spectral clustering methods.

论文关键词:Clustering,Convex optimization,Multi-way graph equipartitioning,Semidefinite programming,Spectral clustering

论文评审过程:Received 31 August 2005, Revised 4 April 2006, Accepted 14 May 2006, Available online 18 July 2006.

论文官网地址:https://doi.org/10.1016/j.patcog.2006.05.021