资源论文Spectral Clustering of Graphs with the Bethe Hessian

Spectral Clustering of Graphs with the Bethe Hessian

2020-01-19 | |  108 |   112 |   0

Abstract

Spectral clustering is a standard approach to label nodes on a graph by studying the (largest or lowest) eigenvalues of a symmetric real matrix such as e.g. the adjacency or the Laplacian. Recently, it has been argued that using instead a more complicated, non-symmetric and higher dimensional operator, related to the non-backtracking walk on the graph, leads to improved performance in detecting clusters, and even to optimal performance for the stochastic block model. Here, we propose to use instead a simpler object, a symmetric real matrix known as the Bethe Hessian operator, or deformed Laplacian. We show that this approach combines the performances of the non-backtracking operator, thus detecting clusters all the way down to the theoretical limit in the stochastic block model, with the computational, theoretical and memory advantages of real symmetric matrices.

上一篇:Large-scale L-BFGS using MapReduce

下一篇:Parallel Direction Method of Multipliers

用户评价
全部评价

热门资源

  • Regularizing RNNs...

    Recently, caption generation with an encoder-de...

  • Deep Cross-media ...

    Cross-media retrieval is a research hotspot in ...

  • Supervised Descen...

    Many computer vision problems (e.

  • Learning Expressi...

    Facial expression is temporally dynamic event w...

  • Attributed Graph ...

    Graph clustering is a fundamental task which di...