We analyze a stochastic model of neuronal population dynamics with intrinsic noise. In the thermodynamic limit N -> infinity, where N determines the size of each population, the dynamics is described by deterministic Wilson–Cowan equations. On the other hand, for finite N the dynamics is described by a master equation that determines the probability of spiking activity within each population. We first consider a single excitatory population that exhibits bistability in the deterministic limit. The steady–state probability distribution of the stochastic network has maxima at points corresponding to the stable fixed points of the deterministic network; the relative weighting of the two maxima depends on the system size. For large but finite N...
We consider here an extension and generalization of the stochastic neuronal network model developed...
Characterizing metastable neural dynamics in finite-size spiking networks remains a daunting challen...
Characterizing metastable neural dynamics in finite-size spiking networks remains a daunting challen...
We analyze a stochastic model of neuronal population dynamics with intrinsic noise. In the thermodyn...
One of the major challenges in neuroscience is to determine how noise that is present at the molecul...
We consider the stochastic dynamics of escape in an excitable system, the FitzHugh-Nagumo (FHN) neur...
Despite the huge number of neurons composing the brain networks, ongoing activity of local cell asse...
Networks of neurons produce diverse patterns of oscillations, arising from the network's global prop...
We consider a simple Markovian class of the stochastic Wilson-Cowan type models of neuronal network ...
We analyze a master equation formulation of stochastic neurodynamics for a network of synaptically c...
How does reliable computation emerge from networks of noisy neurons? While individual neurons are in...
International audienceWe study a stochastic system of interacting neurons and its metastable propert...
AbstractWe consider multi-class systems of interacting nonlinear Hawkes processes modeling several l...
A problem of the stochastic nonlinear analysis of neuronal activity is studied by the example of the...
Finite-size effects, inducing neural variability, metastability and dynamical phase transition, play...
We consider here an extension and generalization of the stochastic neuronal network model developed...
Characterizing metastable neural dynamics in finite-size spiking networks remains a daunting challen...
Characterizing metastable neural dynamics in finite-size spiking networks remains a daunting challen...
We analyze a stochastic model of neuronal population dynamics with intrinsic noise. In the thermodyn...
One of the major challenges in neuroscience is to determine how noise that is present at the molecul...
We consider the stochastic dynamics of escape in an excitable system, the FitzHugh-Nagumo (FHN) neur...
Despite the huge number of neurons composing the brain networks, ongoing activity of local cell asse...
Networks of neurons produce diverse patterns of oscillations, arising from the network's global prop...
We consider a simple Markovian class of the stochastic Wilson-Cowan type models of neuronal network ...
We analyze a master equation formulation of stochastic neurodynamics for a network of synaptically c...
How does reliable computation emerge from networks of noisy neurons? While individual neurons are in...
International audienceWe study a stochastic system of interacting neurons and its metastable propert...
AbstractWe consider multi-class systems of interacting nonlinear Hawkes processes modeling several l...
A problem of the stochastic nonlinear analysis of neuronal activity is studied by the example of the...
Finite-size effects, inducing neural variability, metastability and dynamical phase transition, play...
We consider here an extension and generalization of the stochastic neuronal network model developed...
Characterizing metastable neural dynamics in finite-size spiking networks remains a daunting challen...
Characterizing metastable neural dynamics in finite-size spiking networks remains a daunting challen...