42 pages, 4 figuresThis paper establishes limit theorems for a class of stochastic hybrid systems (continuous deterministic dynamic coupled with jump Markov processes) in the fluid limit (small jumps at high frequency), thus extending known results for jump Markov processes. We prove a functional law of large numbers with exponential convergence speed, derive a diffusion approximation and establish a functional central limit theorem. We apply these results to neuron models with stochastic ion channels, as the number of channels goes to infinity, estimating the convergence to the deterministic model. In terms of neural coding, we apply our central limit theorems to estimate numerically impact of channel noise both on frequency and spike timi...
We rigorously prove a central limit theorem for neural network models with a single hidden layer. Th...
Our motivation comes from the large population approximation of individual based models in populatio...
We consider the behaviour of sequences of Continuous Time Markov Chains (CTMC) based models of syste...
We consider the stochastic system of interacting neurons introduced in De Masi et al. (2015) and in ...
International audienceWe study the stochastic system of interacting neurons introduced in De Masi et...
In the mean field integrate-and-fire model, the dynamics of a typical neuronwithin a large network i...
We obtain a limit theorem endowed with quantitative estimates for a general class of infinite dimens...
We consider a system of N neurons, each spiking randomly with rate depending on its membrane potenti...
We consider the stochastic system of interacting neurons introduced in De Masi et al. (2015) and in ...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
One of the major challenges in neuroscience is to determine how noise that is present at the molecul...
AbstractWe consider multi-class systems of interacting nonlinear Hawkes processes modeling several l...
We investigate the limit behavior of a class of stochastic hybrid systems obtained by hybrid approxi...
Mathematical models of biological neural networks are associated to a rich and complex class of stoc...
We rigorously prove a central limit theorem for neural network models with a single hidden layer. Th...
Our motivation comes from the large population approximation of individual based models in populatio...
We consider the behaviour of sequences of Continuous Time Markov Chains (CTMC) based models of syste...
We consider the stochastic system of interacting neurons introduced in De Masi et al. (2015) and in ...
International audienceWe study the stochastic system of interacting neurons introduced in De Masi et...
In the mean field integrate-and-fire model, the dynamics of a typical neuronwithin a large network i...
We obtain a limit theorem endowed with quantitative estimates for a general class of infinite dimens...
We consider a system of N neurons, each spiking randomly with rate depending on its membrane potenti...
We consider the stochastic system of interacting neurons introduced in De Masi et al. (2015) and in ...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
One of the major challenges in neuroscience is to determine how noise that is present at the molecul...
AbstractWe consider multi-class systems of interacting nonlinear Hawkes processes modeling several l...
We investigate the limit behavior of a class of stochastic hybrid systems obtained by hybrid approxi...
Mathematical models of biological neural networks are associated to a rich and complex class of stoc...
We rigorously prove a central limit theorem for neural network models with a single hidden layer. Th...
Our motivation comes from the large population approximation of individual based models in populatio...
We consider the behaviour of sequences of Continuous Time Markov Chains (CTMC) based models of syste...