In this work we study of the dynamics of large-size random neural networks. Different methods have been developed to analyze their behavior, and most of them rely on heuristic methods based on Gaussian assumptions regarding the fluctuations in the limit of infinite sizes. These approaches, however, do not justify the underlying assumptions systematically. Furthermore, they are incapable of deriving in general the stability of the derived mean-field equations, and they are not amenable to analysis of finite-size corrections. Here we present a systematic method based on path integrals which overcomes these limitations. We apply the method to a large nonlinear rate-based neural network with random asymmetric connectivity matrix. We derive the ...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
International audienceWe study the mean-field limit and stationary distributions of a pulse-coupled ...
Recurrent networks of randomly coupled rate neurons display a transition to chaos at a critical coup...
In this work we study of the dynamics of large-size random neural networks. Different methods have b...
Machine learning, and in particular neural network models, have revolutionized fields such as image,...
Review paper, 36 pages, 5 figuresInternational audienceThis paper is a review dealing with the study...
Abstract—Recurrent spiking neural networks can provide biologically inspired model of robot controll...
This paper is a review dealing with the study of large size random recurrent neural networks. The co...
This thesis regards the dynamics of neural ensembles, investigated through mathematical models. When...
Networks of randomly coupled rate neurons display a transition to chaos at a critical coupling stren...
Recently, neural networks (NN) with an infinite number of layers have been introduced. Especially f...
The Cohen and Grossberg neural networks model is studied in the case when the neurons are subject to...
Abstract. We analyze a stochastic neuronal network model which corresponds to an all-to-all net-work...
We report about the main dynamical features of a model of leaky integrate-and-fire excitatory neuron...
Abstract. We study the mean-field limit and stationary distributions of a pulse-coupled network mode...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
International audienceWe study the mean-field limit and stationary distributions of a pulse-coupled ...
Recurrent networks of randomly coupled rate neurons display a transition to chaos at a critical coup...
In this work we study of the dynamics of large-size random neural networks. Different methods have b...
Machine learning, and in particular neural network models, have revolutionized fields such as image,...
Review paper, 36 pages, 5 figuresInternational audienceThis paper is a review dealing with the study...
Abstract—Recurrent spiking neural networks can provide biologically inspired model of robot controll...
This paper is a review dealing with the study of large size random recurrent neural networks. The co...
This thesis regards the dynamics of neural ensembles, investigated through mathematical models. When...
Networks of randomly coupled rate neurons display a transition to chaos at a critical coupling stren...
Recently, neural networks (NN) with an infinite number of layers have been introduced. Especially f...
The Cohen and Grossberg neural networks model is studied in the case when the neurons are subject to...
Abstract. We analyze a stochastic neuronal network model which corresponds to an all-to-all net-work...
We report about the main dynamical features of a model of leaky integrate-and-fire excitatory neuron...
Abstract. We study the mean-field limit and stationary distributions of a pulse-coupled network mode...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
International audienceWe study the mean-field limit and stationary distributions of a pulse-coupled ...
Recurrent networks of randomly coupled rate neurons display a transition to chaos at a critical coup...