This paper is a review dealing with the study of large size random recurrent neural networks. The connection weights are varying 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 2 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 3, mean-field dynamics is developed. The probability distribution characterizing global dynamics is computed. In section 4, some applications of mean-field theory to the prediction of chaotic regime for Analog Formal Random Recurren...
Using a generalized random recurrent neural network model, and by extending our recently developed m...
Random recurrent networks facilitate the tractable analysis of large networks. The spectrum of the c...
Random recurrent networks facilitate the tractable analysis of large networks. The spectrum of the c...
Review paper, 36 pages, 5 figuresInternational audienceThis paper is a review dealing with the study...
Review paper, 36 pages, 5 figuresInternational audienceThis paper is a review dealing with the study...
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...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
We here unify the field-theoretical approach to neuronal networks with large deviations theory. For ...
Abstract. In contradiction with Hopeld-like networks, random recur-rent neural networks (RRNN), wher...
Using a generalized random recurrent neural network model, and by extending our recently developed m...
Using a generalized random recurrent neural network model, and by extending our recently developed m...
International audienceWe here unify the field-theoretical approach to neuronal networks with large d...
International audienceIn contradiction with Hopfield-like networks, random recurrent neural networks...
International audienceIn contradiction with Hopfield-like networks, random recurrent neural networks...
Using a generalized random recurrent neural network model, and by extending our recently developed m...
Random recurrent networks facilitate the tractable analysis of large networks. The spectrum of the c...
Random recurrent networks facilitate the tractable analysis of large networks. The spectrum of the c...
Review paper, 36 pages, 5 figuresInternational audienceThis paper is a review dealing with the study...
Review paper, 36 pages, 5 figuresInternational audienceThis paper is a review dealing with the study...
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...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
We here unify the field-theoretical approach to neuronal networks with large deviations theory. For ...
Abstract. In contradiction with Hopeld-like networks, random recur-rent neural networks (RRNN), wher...
Using a generalized random recurrent neural network model, and by extending our recently developed m...
Using a generalized random recurrent neural network model, and by extending our recently developed m...
International audienceWe here unify the field-theoretical approach to neuronal networks with large d...
International audienceIn contradiction with Hopfield-like networks, random recurrent neural networks...
International audienceIn contradiction with Hopfield-like networks, random recurrent neural networks...
Using a generalized random recurrent neural network model, and by extending our recently developed m...
Random recurrent networks facilitate the tractable analysis of large networks. The spectrum of the c...
Random recurrent networks facilitate the tractable analysis of large networks. The spectrum of the c...