Literature DB >> 30319156

NETWORK-ENSEMBLE COMPARISONS WITH STOCHASTIC REWIRING AND VON NEUMANN ENTROPY.

Zichao Li1,2, Peter J Mucha2, Dane Taylor2,3.   

Abstract

Assessing whether a given network is typical or atypical for a random-network ensemble (i.e., network-ensemble comparison) has widespread applications ranging from null-model selection and hypothesis testing to clustering and classifying networks. We develop a framework for network-ensemble comparison by subjecting the network to stochastic rewiring. We study two rewiring processes-uniform and degree-preserved rewiring-which yield random-network ensembles that converge to the Erdős-Rényi and configuration-model ensembles, respectively. We study convergence through von Neumann entropy (VNE)-a network summary statistic measuring information content based on the spectra of a Laplacian matrix-and develop a perturbation analysis for the expected effect of rewiring on VNE. Our analysis yields an estimate for how many rewires are required for a given network to resemble a typical network from an ensemble, offering a computationally efficient quantity for network-ensemble comparison that does not require simulation of the corresponding rewiring process.

Entities:  

Keywords:  05C82; 28D20; 60Gxx; 60J10; 62M02; 94A17; mean field theory; network rewiring; network science; network-ensemble comparison; null models; von Neumann entropy

Year:  2018        PMID: 30319156      PMCID: PMC6181241          DOI: 10.1137/17M1124218

Source DB:  PubMed          Journal:  SIAM J Appl Math        ISSN: 0036-1399            Impact factor:   2.080


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