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Main Authors: Lucente, Dario, Gradenigo, Giacomo, Salasnich, Luca
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.16422
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author Lucente, Dario
Gradenigo, Giacomo
Salasnich, Luca
author_facet Lucente, Dario
Gradenigo, Giacomo
Salasnich, Luca
contents One among the most intriguing results coming from the application of statistical mechanics to the study of brain is the understanding that it, as a dynamical system, is inherently out of equilibrium. In the realm of non-equilibrium statistical mechanics and stochastic processes the standard observable computed to discriminate whether a system is at equilibrium or not is the entropy produced along the dynamics. For this reason we present here a detailed calculation of the entropy production in the Amari model, a coarse-grained model of the brain neural network, consisting in an integro-differential equation for the neural activity field, when stochasticity is added to the original dynamics. Since the way to add stochasticity is always to some extent arbitrary, i.e., in particular for coarse-grained models, there is no general prescription to do it, we precisely investigate the interplay between the noise properties and the original model features, discussing in which cases the stationary state is of thermal equilibrium and which cases is out of equilibrium, providing explicit and simple formulas. We also show how, following for the derivation the particular case considered, how the entropy production rate is related to the variation in time of the Shannon entropy of the system.
format Preprint
id arxiv_https___arxiv_org_abs_2510_16422
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Entropy production and irreversibility in the linearized stochastic Amari neural model
Lucente, Dario
Gradenigo, Giacomo
Salasnich, Luca
Disordered Systems and Neural Networks
One among the most intriguing results coming from the application of statistical mechanics to the study of brain is the understanding that it, as a dynamical system, is inherently out of equilibrium. In the realm of non-equilibrium statistical mechanics and stochastic processes the standard observable computed to discriminate whether a system is at equilibrium or not is the entropy produced along the dynamics. For this reason we present here a detailed calculation of the entropy production in the Amari model, a coarse-grained model of the brain neural network, consisting in an integro-differential equation for the neural activity field, when stochasticity is added to the original dynamics. Since the way to add stochasticity is always to some extent arbitrary, i.e., in particular for coarse-grained models, there is no general prescription to do it, we precisely investigate the interplay between the noise properties and the original model features, discussing in which cases the stationary state is of thermal equilibrium and which cases is out of equilibrium, providing explicit and simple formulas. We also show how, following for the derivation the particular case considered, how the entropy production rate is related to the variation in time of the Shannon entropy of the system.
title Entropy production and irreversibility in the linearized stochastic Amari neural model
topic Disordered Systems and Neural Networks
url https://arxiv.org/abs/2510.16422