We study Gaussian approximations to the distribution of a diffusion. The approximations are easy to compute: they are defined by two simple ordinary differential equations for the mean and the covariance. Time correlations can also be computed via solution of a linear stochastic differential equation. We show, using the Kullback–Leibler divergence, that the approximations are accurate in the small noise regime. An analogous discrete time setting is also studied. The results provide both theoretical support for the use of Gaussian processes in the approximation of diffusions, and methodological guidance in the construction of Gaussian approximations in applications
We consider a family of processes (X[var epsilon], Y[var epsilon]) where X[var epsilon] = (X[var eps...
Let $(X_t)$ be a reflected diffusion process in a bounded convex domain in $\mathbb R^d$, solving th...
Stochastic differential equations arise naturally in a range of contexts, from financial to environm...
We study Gaussian approximations to the distribution of a diffusion. The approximations are easy to ...
This paper concerns the approximation of probability measures on R^d with respect to the Kullback-Le...
In this paper we study algorithms to find a Gaussian approximation to a target measure defined on a ...
This paper concerns the approximation of probability measures on Rd with respect to the KullbackLeib...
Abstract. In this paper we study algorithms to find a Gaussian approximation to a target measure def...
We consider a model of small diffusion type where the function which governs the drift term varies i...
In this thesis, Stochastic Gradient Descent (SGD), an optimization method originally popular due to ...
Diffusion processes provide a natural way of modelling a variety of physical and economic phenomena...
Stochastic differential equations (SDE) are a natural tool for modelling systems that are inherently...
AbstractThis paper concerns discrete time Galerkin approximations to the solution of the filtering p...
AbstractA family of one-dimensional linear stochastic approximation procedures in continuous time wh...
In this paper we study algorithms to find a Gaussian approximation to a target measure defined on a ...
We consider a family of processes (X[var epsilon], Y[var epsilon]) where X[var epsilon] = (X[var eps...
Let $(X_t)$ be a reflected diffusion process in a bounded convex domain in $\mathbb R^d$, solving th...
Stochastic differential equations arise naturally in a range of contexts, from financial to environm...
We study Gaussian approximations to the distribution of a diffusion. The approximations are easy to ...
This paper concerns the approximation of probability measures on R^d with respect to the Kullback-Le...
In this paper we study algorithms to find a Gaussian approximation to a target measure defined on a ...
This paper concerns the approximation of probability measures on Rd with respect to the KullbackLeib...
Abstract. In this paper we study algorithms to find a Gaussian approximation to a target measure def...
We consider a model of small diffusion type where the function which governs the drift term varies i...
In this thesis, Stochastic Gradient Descent (SGD), an optimization method originally popular due to ...
Diffusion processes provide a natural way of modelling a variety of physical and economic phenomena...
Stochastic differential equations (SDE) are a natural tool for modelling systems that are inherently...
AbstractThis paper concerns discrete time Galerkin approximations to the solution of the filtering p...
AbstractA family of one-dimensional linear stochastic approximation procedures in continuous time wh...
In this paper we study algorithms to find a Gaussian approximation to a target measure defined on a ...
We consider a family of processes (X[var epsilon], Y[var epsilon]) where X[var epsilon] = (X[var eps...
Let $(X_t)$ be a reflected diffusion process in a bounded convex domain in $\mathbb R^d$, solving th...
Stochastic differential equations arise naturally in a range of contexts, from financial to environm...