Simplifying functional network representation and interpretation through causality clustering
Abstract Functional networks, i.e. networks representing the interactions between the elements of a complex system and reconstructed from the observed elements’ dynamics, are becoming a fundamental tool to unravel the structures created by the movement of information in systems like the human brain....
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2021-07-01
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doaj-f51d358322cc4051a8b4c04953a2ec792021-08-01T11:25:17ZengNature Publishing GroupScientific Reports2045-23222021-07-0111111210.1038/s41598-021-94797-ySimplifying functional network representation and interpretation through causality clusteringMassimiliano Zanin0Instituto de Física Interdisciplinar y Sistemas Complejos (IFISC) (CSIC-UIB), Campus UIBAbstract Functional networks, i.e. networks representing the interactions between the elements of a complex system and reconstructed from the observed elements’ dynamics, are becoming a fundamental tool to unravel the structures created by the movement of information in systems like the human brain. They also present drawbacks, one of the most important being the inherent difficulty in representing and interpreting the resulting structures for large number of nodes and links. I here propose a causality clustering approach, based on grouping nodes into clusters according to their similarity in the overall information dynamics, the latter one being measured by a causality metric. The whole system can then arbitrarily be simplified, with nodes being grouped in e.g. sources, brokers and sinks of information. The advantages and limitations of the proposed approach are discussed using a set of synthetic and real-world data sets, the latter ones representing two neuroscience and technological problems.https://doi.org/10.1038/s41598-021-94797-y |
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DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Massimiliano Zanin |
spellingShingle |
Massimiliano Zanin Simplifying functional network representation and interpretation through causality clustering Scientific Reports |
author_facet |
Massimiliano Zanin |
author_sort |
Massimiliano Zanin |
title |
Simplifying functional network representation and interpretation through causality clustering |
title_short |
Simplifying functional network representation and interpretation through causality clustering |
title_full |
Simplifying functional network representation and interpretation through causality clustering |
title_fullStr |
Simplifying functional network representation and interpretation through causality clustering |
title_full_unstemmed |
Simplifying functional network representation and interpretation through causality clustering |
title_sort |
simplifying functional network representation and interpretation through causality clustering |
publisher |
Nature Publishing Group |
series |
Scientific Reports |
issn |
2045-2322 |
publishDate |
2021-07-01 |
description |
Abstract Functional networks, i.e. networks representing the interactions between the elements of a complex system and reconstructed from the observed elements’ dynamics, are becoming a fundamental tool to unravel the structures created by the movement of information in systems like the human brain. They also present drawbacks, one of the most important being the inherent difficulty in representing and interpreting the resulting structures for large number of nodes and links. I here propose a causality clustering approach, based on grouping nodes into clusters according to their similarity in the overall information dynamics, the latter one being measured by a causality metric. The whole system can then arbitrarily be simplified, with nodes being grouped in e.g. sources, brokers and sinks of information. The advantages and limitations of the proposed approach are discussed using a set of synthetic and real-world data sets, the latter ones representing two neuroscience and technological problems. |
url |
https://doi.org/10.1038/s41598-021-94797-y |
work_keys_str_mv |
AT massimilianozanin simplifyingfunctionalnetworkrepresentationandinterpretationthroughcausalityclustering |
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