71 pagesWe study the asymptotic law of a network of interacting neurons when the number of neurons becomes infinite. Given a completely connected network of firing rate neurons in which the synaptic weights are Gaussian correlated random variables, we describe the asymptotic law of the network when the number of neurons goes to infinity. We introduce the process-level empirical measure of the trajectories of the solutions to the equations of the finite network of neurons and the averaged law (with respect to the synaptic weights) of the trajectories of the solutions to the equations of the network of neurons. The main result of this article is that the image law through the empirical measure satisfies a large deviation principle with a good...
International audienceWe analyze the macroscopic behavior of multi-populations randomly connected ne...
Statistical field theory captures collective non-equilibrium dynamics of neuronal networks, but it d...
We here unify the field-theoretical approach to neuronal networks with large deviations theory. For ...
We study the asymptotic law of a network of interacting neurons when the number of neurons becomes i...
In this work we determine a process-level Large Deviation Principle (LDP) for a model of interacting...
In this work we determine a Large Deviation Principle (LDP) for a model of neurons interacting on a ...
102 pagesWe study the asymptotic behaviour for asymmetric neuronal dynamics in a network of Hopfield...
In this work we determine a process-level Large Deviation Principle (LDP) for a model of interacting...
In this work we determine a Large Deviation Principle (LDP) for a model of neurons interacting on a ...
In this work we determine a Large Deviation Principle (LDP) for a model of neurons interacting on a ...
In this work we determine a Large Deviation Principle (LDP) for a model of neurons interacting on a ...
This thesis addresses the rigorous derivation of mean-field results for the continuous time dynamics...
This thesis addresses the rigorous derivation of mean-field results for the continuous time dynamics...
This thesis addresses the rigorous derivation of mean-field results for the continuous time dynamics...
International audienceWe analyze the macroscopic behavior of multi-populations randomly connected ne...
International audienceWe analyze the macroscopic behavior of multi-populations randomly connected ne...
Statistical field theory captures collective non-equilibrium dynamics of neuronal networks, but it d...
We here unify the field-theoretical approach to neuronal networks with large deviations theory. For ...
We study the asymptotic law of a network of interacting neurons when the number of neurons becomes i...
In this work we determine a process-level Large Deviation Principle (LDP) for a model of interacting...
In this work we determine a Large Deviation Principle (LDP) for a model of neurons interacting on a ...
102 pagesWe study the asymptotic behaviour for asymmetric neuronal dynamics in a network of Hopfield...
In this work we determine a process-level Large Deviation Principle (LDP) for a model of interacting...
In this work we determine a Large Deviation Principle (LDP) for a model of neurons interacting on a ...
In this work we determine a Large Deviation Principle (LDP) for a model of neurons interacting on a ...
In this work we determine a Large Deviation Principle (LDP) for a model of neurons interacting on a ...
This thesis addresses the rigorous derivation of mean-field results for the continuous time dynamics...
This thesis addresses the rigorous derivation of mean-field results for the continuous time dynamics...
This thesis addresses the rigorous derivation of mean-field results for the continuous time dynamics...
International audienceWe analyze the macroscopic behavior of multi-populations randomly connected ne...
International audienceWe analyze the macroscopic behavior of multi-populations randomly connected ne...
Statistical field theory captures collective non-equilibrium dynamics of neuronal networks, but it d...
We here unify the field-theoretical approach to neuronal networks with large deviations theory. For ...