Spectral Dimension Reduction of Complex Dynamical Networks
Dynamical networks are powerful tools for modeling a broad range of complex systems, including financial markets, brains, and ecosystems. They encode how the basic elements (nodes) of these systems interact altogether (via links) and evolve (nodes’ dynamics). Despite substantial progress, little is...
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2019-03-01
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Series: | Physical Review X |
Online Access: | http://doi.org/10.1103/PhysRevX.9.011042 |
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doaj-50fe4a2953674919b30e48282d4327a22020-11-24T22:01:57ZengAmerican Physical SocietyPhysical Review X2160-33082019-03-019101104210.1103/PhysRevX.9.011042Spectral Dimension Reduction of Complex Dynamical NetworksEdward LaurenceNicolas DoyonLouis J. DubéPatrick DesrosiersDynamical networks are powerful tools for modeling a broad range of complex systems, including financial markets, brains, and ecosystems. They encode how the basic elements (nodes) of these systems interact altogether (via links) and evolve (nodes’ dynamics). Despite substantial progress, little is known about why some subtle changes in the network structure, at the so-called critical points, can provoke drastic shifts in its dynamics. We tackle this challenging problem by introducing a method that reduces any network to a simplified low-dimensional version. It can then be used to describe the collective dynamics of the original system. This dimension reduction method relies on spectral graph theory and, more specifically, on the dominant eigenvalues and eigenvectors of the network adjacency matrix. Contrary to previous approaches, our method is able to predict the multiple activation of modular networks as well as the critical points of random networks with arbitrary degree distributions. Our results are of both fundamental and practical interest, as they offer a novel framework to relate the structure of networks to their dynamics and to study the resilience of complex systems.http://doi.org/10.1103/PhysRevX.9.011042 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Edward Laurence Nicolas Doyon Louis J. Dubé Patrick Desrosiers |
spellingShingle |
Edward Laurence Nicolas Doyon Louis J. Dubé Patrick Desrosiers Spectral Dimension Reduction of Complex Dynamical Networks Physical Review X |
author_facet |
Edward Laurence Nicolas Doyon Louis J. Dubé Patrick Desrosiers |
author_sort |
Edward Laurence |
title |
Spectral Dimension Reduction of Complex Dynamical Networks |
title_short |
Spectral Dimension Reduction of Complex Dynamical Networks |
title_full |
Spectral Dimension Reduction of Complex Dynamical Networks |
title_fullStr |
Spectral Dimension Reduction of Complex Dynamical Networks |
title_full_unstemmed |
Spectral Dimension Reduction of Complex Dynamical Networks |
title_sort |
spectral dimension reduction of complex dynamical networks |
publisher |
American Physical Society |
series |
Physical Review X |
issn |
2160-3308 |
publishDate |
2019-03-01 |
description |
Dynamical networks are powerful tools for modeling a broad range of complex systems, including financial markets, brains, and ecosystems. They encode how the basic elements (nodes) of these systems interact altogether (via links) and evolve (nodes’ dynamics). Despite substantial progress, little is known about why some subtle changes in the network structure, at the so-called critical points, can provoke drastic shifts in its dynamics. We tackle this challenging problem by introducing a method that reduces any network to a simplified low-dimensional version. It can then be used to describe the collective dynamics of the original system. This dimension reduction method relies on spectral graph theory and, more specifically, on the dominant eigenvalues and eigenvectors of the network adjacency matrix. Contrary to previous approaches, our method is able to predict the multiple activation of modular networks as well as the critical points of random networks with arbitrary degree distributions. Our results are of both fundamental and practical interest, as they offer a novel framework to relate the structure of networks to their dynamics and to study the resilience of complex systems. |
url |
http://doi.org/10.1103/PhysRevX.9.011042 |
work_keys_str_mv |
AT edwardlaurence spectraldimensionreductionofcomplexdynamicalnetworks AT nicolasdoyon spectraldimensionreductionofcomplexdynamicalnetworks AT louisjdube spectraldimensionreductionofcomplexdynamicalnetworks AT patrickdesrosiers spectraldimensionreductionofcomplexdynamicalnetworks |
_version_ |
1716607871682084864 |