International audienceThe Network Noisy Leaky Integrate and Fire equation is among the simplest model allowing for a self-consistent description of neural networks and gives a rule to determine the probability to find a neuron at the potential $v$. However, its mathematical structure is still poorly understood and, concerning its solutions, very few results are available. In the midst of them, a recent result shows blow-up in finite time for fully excitatory networks. The intuitive explanation is that each firing neuron induces a discharge of the others; thus increases the activity and consequently the discharge rate of the full network. In order to better understand the details of the phenomena and show that the equation is more complex an...
32 pages, 9 figuresWe present a mathematical analysis of a network with integrate and fire neurons, ...
32 pages, 9 figuresWe present a mathematical analysis of a network with integrate and fire neurons, ...
We study in this paper the effect of an unique initial stimulation on random recurrent networks of l...
International audienceThe Network Noisy Leaky Integrate and Fire equation is among the simplest mode...
The network of noisy leaky integrate and fire (NNLIF) model is one of the simplest self-contained me...
The network of noisy leaky integrate and fire (NNLIF) model is one of the simplest self-contained me...
Nonlinear Noisy Leaky Integrate and Fire (NNLIF) models for neurons networks can be written as Fokke...
Nonlinear Noisy Leaky Integrate and Fire (NNLIF) models for neurons networks can be written as Fokke...
The Nonlinear Noisy Leaky Integrate and Fire (NNLIF) model is widely used to describe the dynamics o...
The nonlinear noisy leaky integrate-and-fire (NNLIF) model is a popular mean-field description of a ...
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 ...
The Nonlinear Noisy Leaky Integrate and Fire (NNLIF) model is widely used to describe the dynamics ...
The Nonlinear Noisy Leaky Integrate and Fire (NNLIF) model is widely used to describe the dynamics ...
The Nonlinear Noisy Leaky Integrate and Fire (NNLIF) model is widely used to describe the dynamics ...
32 pages, 9 figuresWe present a mathematical analysis of a network with integrate and fire neurons, ...
32 pages, 9 figuresWe present a mathematical analysis of a network with integrate and fire neurons, ...
We study in this paper the effect of an unique initial stimulation on random recurrent networks of l...
International audienceThe Network Noisy Leaky Integrate and Fire equation is among the simplest mode...
The network of noisy leaky integrate and fire (NNLIF) model is one of the simplest self-contained me...
The network of noisy leaky integrate and fire (NNLIF) model is one of the simplest self-contained me...
Nonlinear Noisy Leaky Integrate and Fire (NNLIF) models for neurons networks can be written as Fokke...
Nonlinear Noisy Leaky Integrate and Fire (NNLIF) models for neurons networks can be written as Fokke...
The Nonlinear Noisy Leaky Integrate and Fire (NNLIF) model is widely used to describe the dynamics o...
The nonlinear noisy leaky integrate-and-fire (NNLIF) model is a popular mean-field description of a ...
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 ...
The Nonlinear Noisy Leaky Integrate and Fire (NNLIF) model is widely used to describe the dynamics ...
The Nonlinear Noisy Leaky Integrate and Fire (NNLIF) model is widely used to describe the dynamics ...
The Nonlinear Noisy Leaky Integrate and Fire (NNLIF) model is widely used to describe the dynamics ...
32 pages, 9 figuresWe present a mathematical analysis of a network with integrate and fire neurons, ...
32 pages, 9 figuresWe present a mathematical analysis of a network with integrate and fire neurons, ...
We study in this paper the effect of an unique initial stimulation on random recurrent networks of l...