We study approximations to a class of vector-valued equations of Burgers type driven by a multiplicative space-time white noise. A solution theory for this class of equations has been developed recently in Probability Theory Related Fields by Hairer and Weber. The key idea was to use the theory of controlled rough paths to give definitions of weak/mild solutions and to set up a Picard iteration argument. In this article the limiting behavior of a rather large class of (spatial) approximations to these equations is studied. These approximations are shown to converge and convergence rates are given, but the limit may depend on the particular choice of approximation. This effect is a spatial analogue to the Itô-Stratonovich correction in th...
Abstract. We consider numerical solutions of elliptic stochastic PDEs driven by spatial white noise....
The main purpose of this paper is to investigate the spectral Galerkin method for spatial discretiza...
In this paper we show that solutions of stochastic partial differ-ential equations driven by Brownia...
In this article, we show how the theory of rough paths can be used to provide a notion of solution t...
The main motivation behind writing this thesis was to construct numerical methods to approximate sol...
We consider a class of stochastic PDEs of Burgers type in spatial dimension 1, driven by space–time ...
Recently, a solution theory for one-dimensional stochastic PDEs of Burgers type driven by space-time...
This article is devoted to the numerical study of various finite-difference approximations to the st...
In this article, we propose an all-in-one statement which includes existence, uniqueness, regularity...
We consider a natural class of $\mathbf{R}^d$-valued one-dimensional stochastic PDEs driven by space...
Recently, a solution theory for one-dimensional stochastic PDEs of Burgers type driven by space-time...
In this paper we propose an all-in-one statement which includes existence, uniqueness, regularity, a...
We consider two discrete schemes for studying and approximating stochastic differential equations (...
The main purpose of this paper is to investigate the spectral Galerkin method for spatial discretiza...
In this paper we show that solutions of stochastic partial differ- ential equations driven by Browni...
Abstract. We consider numerical solutions of elliptic stochastic PDEs driven by spatial white noise....
The main purpose of this paper is to investigate the spectral Galerkin method for spatial discretiza...
In this paper we show that solutions of stochastic partial differ-ential equations driven by Brownia...
In this article, we show how the theory of rough paths can be used to provide a notion of solution t...
The main motivation behind writing this thesis was to construct numerical methods to approximate sol...
We consider a class of stochastic PDEs of Burgers type in spatial dimension 1, driven by space–time ...
Recently, a solution theory for one-dimensional stochastic PDEs of Burgers type driven by space-time...
This article is devoted to the numerical study of various finite-difference approximations to the st...
In this article, we propose an all-in-one statement which includes existence, uniqueness, regularity...
We consider a natural class of $\mathbf{R}^d$-valued one-dimensional stochastic PDEs driven by space...
Recently, a solution theory for one-dimensional stochastic PDEs of Burgers type driven by space-time...
In this paper we propose an all-in-one statement which includes existence, uniqueness, regularity, a...
We consider two discrete schemes for studying and approximating stochastic differential equations (...
The main purpose of this paper is to investigate the spectral Galerkin method for spatial discretiza...
In this paper we show that solutions of stochastic partial differ- ential equations driven by Browni...
Abstract. We consider numerical solutions of elliptic stochastic PDEs driven by spatial white noise....
The main purpose of this paper is to investigate the spectral Galerkin method for spatial discretiza...
In this paper we show that solutions of stochastic partial differ-ential equations driven by Brownia...