Wasserstein contraction for the stochastic ...
Type de document :
Pré-publication ou Document de travail
Titre :
Wasserstein contraction for the stochastic Morris-Lecar neuron model
Auteur(s) :
Herda, Maxime [Auteur]
Reliable numerical approximations of dissipative systems [RAPSODI]
Monmarché, Pierre [Auteur]
Laboratoire Jacques-Louis Lions [LJLL (UMR_7598)]
Laboratoire de chimie théorique [LCT]
Perthame, Benoît [Auteur]
Laboratoire Jacques-Louis Lions [LJLL (UMR_7598)]
Modelling and Analysis for Medical and Biological Applications [MAMBA]
Reliable numerical approximations of dissipative systems [RAPSODI]
Monmarché, Pierre [Auteur]
Laboratoire Jacques-Louis Lions [LJLL (UMR_7598)]
Laboratoire de chimie théorique [LCT]
Perthame, Benoît [Auteur]
Laboratoire Jacques-Louis Lions [LJLL (UMR_7598)]
Modelling and Analysis for Medical and Biological Applications [MAMBA]
Date de publication :
2023-07-25
Mot(s)-clé(s) en anglais :
Voltage-conductance kinetic equation
Neural networks
Reflected SDEs
Fokker-Planck equation
Wasserstein distance
Couplings
Neural networks
Reflected SDEs
Fokker-Planck equation
Wasserstein distance
Couplings
Discipline(s) HAL :
Mathématiques [math]/Equations aux dérivées partielles [math.AP]
Mathématiques [math]/Probabilités [math.PR]
Mathématiques [math]/Probabilités [math.PR]
Résumé en anglais : [en]
Neuron models have attracted a lot of attention recently, both in mathematics and neuroscience. We are interested in studying long-time and largepopulation emerging properties in a simplified toy model. From a mathematical ...
Lire la suite >Neuron models have attracted a lot of attention recently, both in mathematics and neuroscience. We are interested in studying long-time and largepopulation emerging properties in a simplified toy model. From a mathematical perspective, this amounts to study the long-time behaviour of a degenerate reflected diffusion process. Using coupling arguments, the flow is proven to be a contraction of the Wasserstein distance for long times, which implies the exponential relaxation toward a (non-explicit) unique globally attractive equilibrium distribution. The result is extended to a McKean-Vlasov type non-linear variation of the model, when the mean-field interaction is sufficiently small. The ergodicity of the process results from a combination of deterministic contraction properties and local diffusion, the noise being sufficient to drive the system away from non-contractive domains.Lire moins >
Lire la suite >Neuron models have attracted a lot of attention recently, both in mathematics and neuroscience. We are interested in studying long-time and largepopulation emerging properties in a simplified toy model. From a mathematical perspective, this amounts to study the long-time behaviour of a degenerate reflected diffusion process. Using coupling arguments, the flow is proven to be a contraction of the Wasserstein distance for long times, which implies the exponential relaxation toward a (non-explicit) unique globally attractive equilibrium distribution. The result is extended to a McKean-Vlasov type non-linear variation of the model, when the mean-field interaction is sufficiently small. The ergodicity of the process results from a combination of deterministic contraction properties and local diffusion, the noise being sufficient to drive the system away from non-contractive domains.Lire moins >
Langue :
Anglais
Projet ANR :
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