We review a recent approach to the mean-field limits in neural networks that takes into account the stochastic nature of input current and the uncertainty in synaptic coupling. This approach was proved to be a rigorous limit of the network equations in a general setting, and we express here the results in a more customary and simpler framework. We propose a heuristic argument to derive these equations providing a more intuitive understanding of their origin. These equations are characterized by a strong coupling between the different moments of the solutions. We analyse the equations, present an algorithm to simulate the solutions of these mean-field equations, and investigate numerically the equations. In particular, we build a bridge betw...
We consider a neural network with adapting synapses whose dynamics can be analytically computed. The...
We rigorously prove a central limit theorem for neural network models with a single hidden layer. Th...
This thesis addresses the rigorous derivation of mean-field results for the continuous time dynamics...
We review a recent approach to the mean-field limits in neural networks that takes into account the ...
International audienceWe present a simple Markov model of spiking neural dynamics that can be analyt...
Machine learning, and in particular neural network models, have revolutionized fields such as image,...
<p>Mean field analysis of the model assessing the dependence of the network behaviour on the potenti...
20 pagesInternational audienceWe investigate the dynamics of large-scale interacting neural populati...
We analyze a master equation formulation of stochastic neurodynamics for a network of synaptically c...
Abstract. We analyze a stochastic neuronal network model which corresponds to an all-to-all net-work...
The neural dynamics generating sensory, motor, and cognitive functions are commonly understood throu...
Abstract. We study the mean-field limit and stationary distributions of a pulse-coupled network mode...
International audienceWe study the mean-field limit and stationary distributions of a pulse-coupled ...
Mean-field theory for networks of spiking neurons based on the so-called diffusion approximation has...
We consider a neural network with adapting synapses whose dynamics can be analitically computed. The...
We consider a neural network with adapting synapses whose dynamics can be analytically computed. The...
We rigorously prove a central limit theorem for neural network models with a single hidden layer. Th...
This thesis addresses the rigorous derivation of mean-field results for the continuous time dynamics...
We review a recent approach to the mean-field limits in neural networks that takes into account the ...
International audienceWe present a simple Markov model of spiking neural dynamics that can be analyt...
Machine learning, and in particular neural network models, have revolutionized fields such as image,...
<p>Mean field analysis of the model assessing the dependence of the network behaviour on the potenti...
20 pagesInternational audienceWe investigate the dynamics of large-scale interacting neural populati...
We analyze a master equation formulation of stochastic neurodynamics for a network of synaptically c...
Abstract. We analyze a stochastic neuronal network model which corresponds to an all-to-all net-work...
The neural dynamics generating sensory, motor, and cognitive functions are commonly understood throu...
Abstract. We study the mean-field limit and stationary distributions of a pulse-coupled network mode...
International audienceWe study the mean-field limit and stationary distributions of a pulse-coupled ...
Mean-field theory for networks of spiking neurons based on the so-called diffusion approximation has...
We consider a neural network with adapting synapses whose dynamics can be analitically computed. The...
We consider a neural network with adapting synapses whose dynamics can be analytically computed. The...
We rigorously prove a central limit theorem for neural network models with a single hidden layer. Th...
This thesis addresses the rigorous derivation of mean-field results for the continuous time dynamics...