Spectral Entropies as Information-Theoretic Tools for Complex Network Comparison

Any physical system can be viewed from the perspective that information is implicitly represented in its state. However, the quantification of this information when it comes to complex networks has remained largely elusive. In this work, we use techniques inspired by quantum statistical mechanics to...

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Main Authors: Manlio De Domenico, Jacob Biamonte
Format: Article
Language:English
Published: American Physical Society 2016-12-01
Series:Physical Review X
Online Access:http://doi.org/10.1103/PhysRevX.6.041062
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spelling doaj-c4ca53024ae249cda7334fbcadd4e6202020-11-25T00:29:15ZengAmerican Physical SocietyPhysical Review X2160-33082016-12-016404106210.1103/PhysRevX.6.041062Spectral Entropies as Information-Theoretic Tools for Complex Network ComparisonManlio De DomenicoJacob BiamonteAny physical system can be viewed from the perspective that information is implicitly represented in its state. However, the quantification of this information when it comes to complex networks has remained largely elusive. In this work, we use techniques inspired by quantum statistical mechanics to define an entropy measure for complex networks and to develop a set of information-theoretic tools, based on network spectral properties, such as Rényi q entropy, generalized Kullback-Leibler and Jensen-Shannon divergences, the latter allowing us to define a natural distance measure between complex networks. First, we show that by minimizing the Kullback-Leibler divergence between an observed network and a parametric network model, inference of model parameter(s) by means of maximum-likelihood estimation can be achieved and model selection can be performed with appropriate information criteria. Second, we show that the information-theoretic metric quantifies the distance between pairs of networks and we can use it, for instance, to cluster the layers of a multilayer system. By applying this framework to networks corresponding to sites of the human microbiome, we perform hierarchical cluster analysis and recover with high accuracy existing community-based associations. Our results imply that spectral-based statistical inference in complex networks results in demonstrably superior performance as well as a conceptual backbone, filling a gap towards a network information theory.http://doi.org/10.1103/PhysRevX.6.041062
collection DOAJ
language English
format Article
sources DOAJ
author Manlio De Domenico
Jacob Biamonte
spellingShingle Manlio De Domenico
Jacob Biamonte
Spectral Entropies as Information-Theoretic Tools for Complex Network Comparison
Physical Review X
author_facet Manlio De Domenico
Jacob Biamonte
author_sort Manlio De Domenico
title Spectral Entropies as Information-Theoretic Tools for Complex Network Comparison
title_short Spectral Entropies as Information-Theoretic Tools for Complex Network Comparison
title_full Spectral Entropies as Information-Theoretic Tools for Complex Network Comparison
title_fullStr Spectral Entropies as Information-Theoretic Tools for Complex Network Comparison
title_full_unstemmed Spectral Entropies as Information-Theoretic Tools for Complex Network Comparison
title_sort spectral entropies as information-theoretic tools for complex network comparison
publisher American Physical Society
series Physical Review X
issn 2160-3308
publishDate 2016-12-01
description Any physical system can be viewed from the perspective that information is implicitly represented in its state. However, the quantification of this information when it comes to complex networks has remained largely elusive. In this work, we use techniques inspired by quantum statistical mechanics to define an entropy measure for complex networks and to develop a set of information-theoretic tools, based on network spectral properties, such as Rényi q entropy, generalized Kullback-Leibler and Jensen-Shannon divergences, the latter allowing us to define a natural distance measure between complex networks. First, we show that by minimizing the Kullback-Leibler divergence between an observed network and a parametric network model, inference of model parameter(s) by means of maximum-likelihood estimation can be achieved and model selection can be performed with appropriate information criteria. Second, we show that the information-theoretic metric quantifies the distance between pairs of networks and we can use it, for instance, to cluster the layers of a multilayer system. By applying this framework to networks corresponding to sites of the human microbiome, we perform hierarchical cluster analysis and recover with high accuracy existing community-based associations. Our results imply that spectral-based statistical inference in complex networks results in demonstrably superior performance as well as a conceptual backbone, filling a gap towards a network information theory.
url http://doi.org/10.1103/PhysRevX.6.041062
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