Review paper, 36 pages, 5 figuresInternational audienceThis paper is a review dealing with the study of large size random recurrent neural networks. The connection weights are selected according to a probability law and it is possible to predict the network dynamics at a macroscopic scale using an averaging principle. After a first introductory section, the section 1 reviews the various models from the points of view of the single neuron dynamics and of the global network dynamics. A summary of notations is presented, which is quite helpful for the sequel. In section 2, mean-field dynamics is developed. The probability distribution characterizing global dynamics is computed. In section 3, some applications of mean-field theory to the predic...
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...
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...
This paper is a review dealing with the study of large size random recurrent neural networks. The co...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
Abstract—Recurrent spiking neural networks can provide biologically inspired model of robot controll...
We here unify the field-theoretical approach to neuronal networks with large deviations theory. For ...
Using a generalized random recurrent neural network model, and by extending our recently developed m...
In this work we study of the dynamics of large-size random neural networks. Different methods have b...
Abstract. In contradiction with Hopeld-like networks, random recur-rent neural networks (RRNN), wher...
International audienceIn contradiction with Hopfield-like networks, random recurrent neural networks...
Random recurrent networks facilitate the tractable analysis of large networks. The spectrum of the c...
Abstract. We analyze a stochastic neuronal network model which corresponds to an all-to-all net-work...
55 pages, 9 figuresWe derive the mean-field equations arising as the limit of a network of interacti...
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...
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...
This paper is a review dealing with the study of large size random recurrent neural networks. The co...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
Abstract—Recurrent spiking neural networks can provide biologically inspired model of robot controll...
We here unify the field-theoretical approach to neuronal networks with large deviations theory. For ...
Using a generalized random recurrent neural network model, and by extending our recently developed m...
In this work we study of the dynamics of large-size random neural networks. Different methods have b...
Abstract. In contradiction with Hopeld-like networks, random recur-rent neural networks (RRNN), wher...
International audienceIn contradiction with Hopfield-like networks, random recurrent neural networks...
Random recurrent networks facilitate the tractable analysis of large networks. The spectrum of the c...
Abstract. We analyze a stochastic neuronal network model which corresponds to an all-to-all net-work...
55 pages, 9 figuresWe derive the mean-field equations arising as the limit of a network of interacti...
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...
Machine learning, and in particular neural network models, have revolutionized fields such as image,...