A stochastic-field description of finite-size spiking neural networks.

Neural network dynamics are governed by the interaction of spiking neurons. Stochastic aspects of single-neuron dynamics propagate up to the network level and shape the dynamical and informational properties of the population. Mean-field models of population activity disregard the finite-size stocha...

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Main Authors: Grégory Dumont, Alexandre Payeur, André Longtin
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-08-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC5560761?pdf=render
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spelling doaj-ad2bf6f1d23d4f31bcfd1dc9a4d82a252020-11-25T01:53:40ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582017-08-01138e100569110.1371/journal.pcbi.1005691A stochastic-field description of finite-size spiking neural networks.Grégory DumontAlexandre PayeurAndré LongtinNeural network dynamics are governed by the interaction of spiking neurons. Stochastic aspects of single-neuron dynamics propagate up to the network level and shape the dynamical and informational properties of the population. Mean-field models of population activity disregard the finite-size stochastic fluctuations of network dynamics and thus offer a deterministic description of the system. Here, we derive a stochastic partial differential equation (SPDE) describing the temporal evolution of the finite-size refractory density, which represents the proportion of neurons in a given refractory state at any given time. The population activity-the density of active neurons per unit time-is easily extracted from this refractory density. The SPDE includes finite-size effects through a two-dimensional Gaussian white noise that acts both in time and along the refractory dimension. For an infinite number of neurons the standard mean-field theory is recovered. A discretization of the SPDE along its characteristic curves allows direct simulations of the activity of large but finite spiking networks; this constitutes the main advantage of our approach. Linearizing the SPDE with respect to the deterministic asynchronous state allows the theoretical investigation of finite-size activity fluctuations. In particular, analytical expressions for the power spectrum and autocorrelation of activity fluctuations are obtained. Moreover, our approach can be adapted to incorporate multiple interacting populations and quasi-renewal single-neuron dynamics.http://europepmc.org/articles/PMC5560761?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Grégory Dumont
Alexandre Payeur
André Longtin
spellingShingle Grégory Dumont
Alexandre Payeur
André Longtin
A stochastic-field description of finite-size spiking neural networks.
PLoS Computational Biology
author_facet Grégory Dumont
Alexandre Payeur
André Longtin
author_sort Grégory Dumont
title A stochastic-field description of finite-size spiking neural networks.
title_short A stochastic-field description of finite-size spiking neural networks.
title_full A stochastic-field description of finite-size spiking neural networks.
title_fullStr A stochastic-field description of finite-size spiking neural networks.
title_full_unstemmed A stochastic-field description of finite-size spiking neural networks.
title_sort stochastic-field description of finite-size spiking neural networks.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2017-08-01
description Neural network dynamics are governed by the interaction of spiking neurons. Stochastic aspects of single-neuron dynamics propagate up to the network level and shape the dynamical and informational properties of the population. Mean-field models of population activity disregard the finite-size stochastic fluctuations of network dynamics and thus offer a deterministic description of the system. Here, we derive a stochastic partial differential equation (SPDE) describing the temporal evolution of the finite-size refractory density, which represents the proportion of neurons in a given refractory state at any given time. The population activity-the density of active neurons per unit time-is easily extracted from this refractory density. The SPDE includes finite-size effects through a two-dimensional Gaussian white noise that acts both in time and along the refractory dimension. For an infinite number of neurons the standard mean-field theory is recovered. A discretization of the SPDE along its characteristic curves allows direct simulations of the activity of large but finite spiking networks; this constitutes the main advantage of our approach. Linearizing the SPDE with respect to the deterministic asynchronous state allows the theoretical investigation of finite-size activity fluctuations. In particular, analytical expressions for the power spectrum and autocorrelation of activity fluctuations are obtained. Moreover, our approach can be adapted to incorporate multiple interacting populations and quasi-renewal single-neuron dynamics.
url http://europepmc.org/articles/PMC5560761?pdf=render
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