资源论文Beyond Spectral Clustering - Tight Relaxations of Balanced Graph Cuts

Beyond Spectral Clustering - Tight Relaxations of Balanced Graph Cuts

2020-01-08 | |  63 |   47 |   0

Abstract

Spectral clustering is based on the spectral relaxation of the normalized/ratio graph cut criterion. While the spectral relaxation is known to be loose, it has been shown recently that a non-linear eigenproblem yields a tight relaxation of the Cheeger cut. In this paper, we extend this result considerably by providing a characterization of all balanced graph cuts which allow for a tight relaxation. Although the resulting optimization problems are non-convex and non-smooth, we provide an efficient first-order scheme which scales to large graphs. Moreover, our approach comes with the quality guarantee that given any partition as initialization the algorithm either outputs a better partition or it stops immediately.

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