Spectral methods for graph clustering – A survey

Spectral methods for graph clustering – A survey

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Article ID: iaor20112257
Volume: 211
Issue: 2
Start Page Number: 221
End Page Number: 231
Publication Date: Jun 2011
Journal: European Journal of Operational Research
Authors: ,
Keywords: graph partitioning, literature survey, spectral analysis, clustering
Abstract:

Graph clustering is an area in cluster analysis that looks for groups of related vertices in a graph. Due to its large applicability, several graph clustering algorithms have been proposed in the last years. A particular class of graph clustering algorithms is known as spectral clustering algorithms. These algorithms are mostly based on the eigen‐decomposition of Laplacian matrices of either weighted or unweighted graphs. This survey presents different graph clustering formulations, most of which based on graph cut and partitioning problems, and describes the main spectral clustering algorithms found in literature that solve these problems.

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