27 p.International audienceReflected diffusions in polyhedral domains are commonly used as approximate models for stochastic processing networks in heavy traffic. Stationary distributions of such models give useful information on the steady state performance of the corresponding stochastic networks and thus it is important to develop reliable and efficient algorithms for numerical computation of such distributions. In this work we propose and analyze a Monte- Carlo scheme based on an Euler type discretization of the reflected stochastic differential equation using a single sequence of time discretization steps which decrease to zero as time approaches infinity. Appropriately weighted empirical measures constructed from the simulated discret...
AbstractWe propose a new scheme for the long time approximation of a diffusion when the drift vector...
International audienceWe investigate some recursive procedures based on an exact or ``approximate'' ...
To sample from distributions in high dimensional spaces or finite large sets di-rectly is not feasib...
Reflected diffusions in polyhedral domains are commonly used as approximate models for stochastic pr...
In this dissertation, we study large deviations problems for stochastic dynamical systems. First, we...
International audienceWe give an explicit error bound between the invariant density of an elliptic r...
Applications arising from computer, telecommunications, and manufacturing systems lead to many chall...
41p.International audienceIn some recent papers, some procedures based on some weighted empirical me...
The aim of this paper is to approximate the expectation of a large class of functionals of the solut...
In this paper we study the convergence rate of the numerical approximation of the quantiles of the m...
AbstractIn this paper we introduce a new form of approximation to diffusions represented as solution...
Dans cette thèse on étudie des schémas numériques pour des processus X à coeffcients discontinus. Un...
International audienceWe introduce new Monte Carlo simulation schemes for diffusions in a discontinu...
AbstractThis paper deals with the estimate of errors introduced by finite sampling in Monte Carlo ev...
International audienceWe describe Monte Carlo algorithms to solve elliptic partial differen- tial eq...
AbstractWe propose a new scheme for the long time approximation of a diffusion when the drift vector...
International audienceWe investigate some recursive procedures based on an exact or ``approximate'' ...
To sample from distributions in high dimensional spaces or finite large sets di-rectly is not feasib...
Reflected diffusions in polyhedral domains are commonly used as approximate models for stochastic pr...
In this dissertation, we study large deviations problems for stochastic dynamical systems. First, we...
International audienceWe give an explicit error bound between the invariant density of an elliptic r...
Applications arising from computer, telecommunications, and manufacturing systems lead to many chall...
41p.International audienceIn some recent papers, some procedures based on some weighted empirical me...
The aim of this paper is to approximate the expectation of a large class of functionals of the solut...
In this paper we study the convergence rate of the numerical approximation of the quantiles of the m...
AbstractIn this paper we introduce a new form of approximation to diffusions represented as solution...
Dans cette thèse on étudie des schémas numériques pour des processus X à coeffcients discontinus. Un...
International audienceWe introduce new Monte Carlo simulation schemes for diffusions in a discontinu...
AbstractThis paper deals with the estimate of errors introduced by finite sampling in Monte Carlo ev...
International audienceWe describe Monte Carlo algorithms to solve elliptic partial differen- tial eq...
AbstractWe propose a new scheme for the long time approximation of a diffusion when the drift vector...
International audienceWe investigate some recursive procedures based on an exact or ``approximate'' ...
To sample from distributions in high dimensional spaces or finite large sets di-rectly is not feasib...