Emergence of power laws in noncritical neuronal systems
Author(s) -
Ali Faqeeh,
Saeed Osat,
Filippo Radicchi,
James P. Gleeson
Publication year - 2019
Publication title -
physical review. e
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.896
H-Index - 304
eISSN - 2470-0053
pISSN - 2470-0045
DOI - 10.1103/physreve.100.010401
Subject(s) - criticality , statistical physics , pareto distribution , branching (polymer chemistry) , power law , physics , complex system , self organized criticality , computer science , complex network , stability (learning theory) , dynamical systems theory , degree distribution , neuroscience , mathematics , quantum mechanics , biology , artificial intelligence , statistics , materials science , machine learning , world wide web , nuclear physics , composite material
Experimental and computational studies provide compelling evidence that neuronal systems are characterized by power-law distributions of neuronal avalanche sizes. This fact is interpreted as an indication that these systems are operating near criticality, and, in turn, typical properties of critical dynamical processes, such as optimal information transmission and stability, are attributed to neuronal systems. The purpose of this Rapid Communication is to show that the presence of power-law distributions for the size of neuronal avalanches is not a sufficient condition for the system to operate near criticality. Specifically, we consider a simplistic model of neuronal dynamics on networks and show that the degree distribution of the underlying neuronal network may trigger power-law distributions for neuronal avalanches even when the system is not in its critical regime. To certify and explain our findings we develop an analytical approach based on percolation theory and branching processes techniques.
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