3noMean-field models are an established method to analyze large stochastic systems with N interacting objects by means of simple deterministic equations that are asymptotically correct when N tends to infinity. For finite N, mean-field equations provide an approximation whose accuracy is model- and parameter-dependent. Recent research has focused on refining the approximation by computing suitable quantities associated with expansions of order $1/N$ and $1/N^2$ to the mean-field equation. In this paper we present a new method for refining mean-field approximations. It couples the master equation governing the evolution of the probability distribution of a truncation of the original state space with a mean-field approximation of a time-inhom...
We study the limiting behaviour of stochastic models of populations of interacting agents, as the nu...
The mean-field analysis technique is used to perform analysis of a system with a large number of com...
This work introduces a Gaussian variational mean-field approximation for inference in dynamical syst...
3noMean-field models are an established method to analyze large stochastic systems with N interactin...
International audienceMean field approximation is a popular method to study the behaviour of stochas...
International audienceMean field models are a popular means to approximate large and complex stochas...
International audienceMean field approximation is a popular method to study the behaviour of stochas...
3Mean field approximation is a powerful tool to study the performance of large stochastic systems th...
International audienceMean field approximation is a powerful tool to study the performance of large ...
Abstract. Markov Population Model is a commonly used framework to describe stochastic systems. Their...
\u3cp\u3eThe statement of the mean field approximation theorem in the mean field theory of Markov pr...
Markov Population Model is a commonly used framework to describe stochastic systems. Their exact ana...
Mean field approximation is a powerful technique which has been used in many settings to study large...
We consider stochastic models in presence of uncertainty, originating from lack of knowledge of para...
International audienceMean field approximation is a powerful technique to study the performance of l...
We study the limiting behaviour of stochastic models of populations of interacting agents, as the nu...
The mean-field analysis technique is used to perform analysis of a system with a large number of com...
This work introduces a Gaussian variational mean-field approximation for inference in dynamical syst...
3noMean-field models are an established method to analyze large stochastic systems with N interactin...
International audienceMean field approximation is a popular method to study the behaviour of stochas...
International audienceMean field models are a popular means to approximate large and complex stochas...
International audienceMean field approximation is a popular method to study the behaviour of stochas...
3Mean field approximation is a powerful tool to study the performance of large stochastic systems th...
International audienceMean field approximation is a powerful tool to study the performance of large ...
Abstract. Markov Population Model is a commonly used framework to describe stochastic systems. Their...
\u3cp\u3eThe statement of the mean field approximation theorem in the mean field theory of Markov pr...
Markov Population Model is a commonly used framework to describe stochastic systems. Their exact ana...
Mean field approximation is a powerful technique which has been used in many settings to study large...
We consider stochastic models in presence of uncertainty, originating from lack of knowledge of para...
International audienceMean field approximation is a powerful technique to study the performance of l...
We study the limiting behaviour of stochastic models of populations of interacting agents, as the nu...
The mean-field analysis technique is used to perform analysis of a system with a large number of com...
This work introduces a Gaussian variational mean-field approximation for inference in dynamical syst...