Spectral methods for network community detection and graph partitioning
Physics and Society
2013-11-13 v1 Statistical Mechanics
Social and Information Networks
Data Analysis, Statistics and Probability
Abstract
We consider three distinct and well studied problems concerning network structure: community detection by modularity maximization, community detection by statistical inference, and normalized-cut graph partitioning. Each of these problems can be tackled using spectral algorithms that make use of the eigenvectors of matrix representations of the network. We show that with certain choices of the free parameters appearing in these spectral algorithms the algorithms for all three problems are, in fact, identical, and hence that, at least within the spectral approximations used here, there is no difference between the modularity- and inference-based community detection methods, or between either and graph partitioning.
Cite
@article{arxiv.1307.7729,
title = {Spectral methods for network community detection and graph partitioning},
author = {M. E. J. Newman},
journal= {arXiv preprint arXiv:1307.7729},
year = {2013}
}
Comments
11 pages, 5 figures