Multilayer Stochastic Block Models Reveal the Multilayer Structure of Complex Networks

In complex systems, the network of interactions we observe between systems components is the aggregate of the interactions that occur through different mechanisms or layers. Recent studies reveal that the existence of multiple interaction layers can have a dramatic impact in the dynamical processes...

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Main Authors: Toni Vallès-Català, Francesco A. Massucci, Roger Guimerà, Marta Sales-Pardo
Format: Article
Language:English
Published: American Physical Society 2016-03-01
Series:Physical Review X
Online Access:http://doi.org/10.1103/PhysRevX.6.011036
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spelling doaj-43ff91a8768049a9a4405f366f9a34052020-11-24T23:20:37ZengAmerican Physical SocietyPhysical Review X2160-33082016-03-016101103610.1103/PhysRevX.6.011036Multilayer Stochastic Block Models Reveal the Multilayer Structure of Complex NetworksToni Vallès-CatalàFrancesco A. MassucciRoger GuimeràMarta Sales-PardoIn complex systems, the network of interactions we observe between systems components is the aggregate of the interactions that occur through different mechanisms or layers. Recent studies reveal that the existence of multiple interaction layers can have a dramatic impact in the dynamical processes occurring on these systems. However, these studies assume that the interactions between systems components in each one of the layers are known, while typically for real-world systems we do not have that information. Here, we address the issue of uncovering the different interaction layers from aggregate data by introducing multilayer stochastic block models (SBMs), a generalization of single-layer SBMs that considers different mechanisms of layer aggregation. First, we find the complete probabilistic solution to the problem of finding the optimal multilayer SBM for a given aggregate-observed network. Because this solution is computationally intractable, we propose an approximation that enables us to verify that multilayer SBMs are more predictive of network structure in real-world complex systems.http://doi.org/10.1103/PhysRevX.6.011036
collection DOAJ
language English
format Article
sources DOAJ
author Toni Vallès-Català
Francesco A. Massucci
Roger Guimerà
Marta Sales-Pardo
spellingShingle Toni Vallès-Català
Francesco A. Massucci
Roger Guimerà
Marta Sales-Pardo
Multilayer Stochastic Block Models Reveal the Multilayer Structure of Complex Networks
Physical Review X
author_facet Toni Vallès-Català
Francesco A. Massucci
Roger Guimerà
Marta Sales-Pardo
author_sort Toni Vallès-Català
title Multilayer Stochastic Block Models Reveal the Multilayer Structure of Complex Networks
title_short Multilayer Stochastic Block Models Reveal the Multilayer Structure of Complex Networks
title_full Multilayer Stochastic Block Models Reveal the Multilayer Structure of Complex Networks
title_fullStr Multilayer Stochastic Block Models Reveal the Multilayer Structure of Complex Networks
title_full_unstemmed Multilayer Stochastic Block Models Reveal the Multilayer Structure of Complex Networks
title_sort multilayer stochastic block models reveal the multilayer structure of complex networks
publisher American Physical Society
series Physical Review X
issn 2160-3308
publishDate 2016-03-01
description In complex systems, the network of interactions we observe between systems components is the aggregate of the interactions that occur through different mechanisms or layers. Recent studies reveal that the existence of multiple interaction layers can have a dramatic impact in the dynamical processes occurring on these systems. However, these studies assume that the interactions between systems components in each one of the layers are known, while typically for real-world systems we do not have that information. Here, we address the issue of uncovering the different interaction layers from aggregate data by introducing multilayer stochastic block models (SBMs), a generalization of single-layer SBMs that considers different mechanisms of layer aggregation. First, we find the complete probabilistic solution to the problem of finding the optimal multilayer SBM for a given aggregate-observed network. Because this solution is computationally intractable, we propose an approximation that enables us to verify that multilayer SBMs are more predictive of network structure in real-world complex systems.
url http://doi.org/10.1103/PhysRevX.6.011036
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