Universality in complex networks: Random matrix analysis

No Thumbnail Available

Date

2007-08

Journal Title

Journal ISSN

Volume Title

Publisher

APS

Abstract

We apply random matrix theory to complex networks. We show that nearest neighbor spacing distribution of the eigenvalues of the adjacency matrices of various model networks, namely scale-free, small-world, and random networks follow universal Gaussian orthogonal ensemble statistics of random matrix theory. Second, we show an analogy between the onset of small-world behavior, quantified by the structural properties of networks, and the transition from Poisson to Gaussian orthogonal ensemble statistics, quantified by Brody parameter characterizing a spectral property. We also present our analysis for a protein-protein interaction network in budding yeast.

Description

Keywords

Physics, Matrix analysis, Network analysis

Citation

Endorsement

Review

Supplemented By

Referenced By