The goal of this paper is to present a series of recent contributions arising in numerical probability. First we present a contribution to a recently introduced problem: stochastic differential equations with constraints in law, investigated through various theoretical and numerical viewpoints. Such a problem may appear as an extension of the famous Skorokhod problem. Then a generic method to approximate in a weak way the invariant distribution of an ergodic Feller process by a Langevin Monte Carlo simulation. It is an extension of a method originally developed for diffusions and based on the weighted empirical measure of an Euler scheme with decreasing step. Finally, we mention without details a recent development of a multilevel Langevin ...
This paper gives a review of recent progress in the design of numerical methods for computing the tr...
We introduce new sufficient conditions for a numerical method to approximate with high order of accu...
In this paper we describe a general framework for deriving modified equations for stochastic differe...
The goal of this paper is to present a series of recent contributions arising in numerical probabili...
In a number of problems of mathematical physics and other fields stochastic differential equations a...
Using concrete examples, we discuss the current and potential use of stochastic ordinary differentia...
We develop a framework that allows the use of the multi-level Monte Carlo (MLMC) methodology (Giles2...
Abstract. This chapter is an introduction and survey of numerical solution methods for stochastic di...
A practical and accessible introduction to numerical methods for stochastic differential equations i...
The lecture outlines the most important mathematical facts about stochastic processes which are desc...
The development of numerical methods for stochastic differential equations has intensified over the ...
Abstract In this paper we are concerned with numerical methods to solve stochastic differential equa...
We introduce computationally efficient Monte Carlo methods for studying the statistics of stochastic...
We introduce new sufficient conditions for a numerical method to approximate with high order of accu...
This book gives a comprehensive introduction to numerical methods and analysis of stochastic process...
This paper gives a review of recent progress in the design of numerical methods for computing the tr...
We introduce new sufficient conditions for a numerical method to approximate with high order of accu...
In this paper we describe a general framework for deriving modified equations for stochastic differe...
The goal of this paper is to present a series of recent contributions arising in numerical probabili...
In a number of problems of mathematical physics and other fields stochastic differential equations a...
Using concrete examples, we discuss the current and potential use of stochastic ordinary differentia...
We develop a framework that allows the use of the multi-level Monte Carlo (MLMC) methodology (Giles2...
Abstract. This chapter is an introduction and survey of numerical solution methods for stochastic di...
A practical and accessible introduction to numerical methods for stochastic differential equations i...
The lecture outlines the most important mathematical facts about stochastic processes which are desc...
The development of numerical methods for stochastic differential equations has intensified over the ...
Abstract In this paper we are concerned with numerical methods to solve stochastic differential equa...
We introduce computationally efficient Monte Carlo methods for studying the statistics of stochastic...
We introduce new sufficient conditions for a numerical method to approximate with high order of accu...
This book gives a comprehensive introduction to numerical methods and analysis of stochastic process...
This paper gives a review of recent progress in the design of numerical methods for computing the tr...
We introduce new sufficient conditions for a numerical method to approximate with high order of accu...
In this paper we describe a general framework for deriving modified equations for stochastic differe...