Exact Rank Reduction of Network Models

With the advent of the big data era, generative models of complex networks are becoming elusive from direct computational simulation. We present an exact, linear-algebraic reduction scheme of generative models of networks. By exploiting the bilinear structure of the matrix representation of the gene...

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Main Authors: Eugenio Valdano, Alex Arenas
Format: Article
Language:English
Published: American Physical Society 2019-09-01
Series:Physical Review X
Online Access:http://doi.org/10.1103/PhysRevX.9.031050
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spelling doaj-8397ad9ca0234499a408c98b1faab7f42020-11-25T02:48:14ZengAmerican Physical SocietyPhysical Review X2160-33082019-09-019303105010.1103/PhysRevX.9.031050Exact Rank Reduction of Network ModelsEugenio ValdanoAlex ArenasWith the advent of the big data era, generative models of complex networks are becoming elusive from direct computational simulation. We present an exact, linear-algebraic reduction scheme of generative models of networks. By exploiting the bilinear structure of the matrix representation of the generative model, we separate its null eigenspace and reduce the exact description of the generative model to a smaller vector space. After reduction, we group generative models in universality classes according to their rank and metric signature and work out, in a computationally affordable way, their relevant properties (e.g., spectrum). The reduction also provides the environment for a simplified computation of their properties. The proposed scheme works for any generative model admitting a matrix representation and will be very useful in the study of dynamical processes on networks, as well as in the understanding of generative models to come, according to the provided classification.http://doi.org/10.1103/PhysRevX.9.031050
collection DOAJ
language English
format Article
sources DOAJ
author Eugenio Valdano
Alex Arenas
spellingShingle Eugenio Valdano
Alex Arenas
Exact Rank Reduction of Network Models
Physical Review X
author_facet Eugenio Valdano
Alex Arenas
author_sort Eugenio Valdano
title Exact Rank Reduction of Network Models
title_short Exact Rank Reduction of Network Models
title_full Exact Rank Reduction of Network Models
title_fullStr Exact Rank Reduction of Network Models
title_full_unstemmed Exact Rank Reduction of Network Models
title_sort exact rank reduction of network models
publisher American Physical Society
series Physical Review X
issn 2160-3308
publishDate 2019-09-01
description With the advent of the big data era, generative models of complex networks are becoming elusive from direct computational simulation. We present an exact, linear-algebraic reduction scheme of generative models of networks. By exploiting the bilinear structure of the matrix representation of the generative model, we separate its null eigenspace and reduce the exact description of the generative model to a smaller vector space. After reduction, we group generative models in universality classes according to their rank and metric signature and work out, in a computationally affordable way, their relevant properties (e.g., spectrum). The reduction also provides the environment for a simplified computation of their properties. The proposed scheme works for any generative model admitting a matrix representation and will be very useful in the study of dynamical processes on networks, as well as in the understanding of generative models to come, according to the provided classification.
url http://doi.org/10.1103/PhysRevX.9.031050
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