We study the approximation of stochastic differential equations driven by a fractional Brownian motion with Hurst parameter H>1/2. For the mean-square error at a single point we derive the optimal rate of convergence that can be achieved by any approximation method using an equidistant discretization of the driving fractional Brownian motion. We find that there are mainly two cases: either the solution can be approximated perfectly or the best possible rate of convergence is n−H−1/2, where n denotes the number of evaluations of the fractional Brownian motion. In addition, we present an implementable approximation scheme that obtains the optimal rate of convergence in the latter case
AbstractWe consider a stochastic differential equation involving a pathwise integral with respect to...
Fractional stochastic differential equation (FSDE)-based random processes are used in a wide spectru...
We consider the time discretization of fractional stochastic wave equation with Gaussian noise, whic...
AbstractWe study the approximation of stochastic differential equations driven by a fractional Brown...
For a stochastic differential equation driven by a fractional Brownian motion with Hurst parameter H...
In this article, we introduce a Wong-Zakai type stationary approximation to the fractional Brownian ...
In this article, we introduce a Wong-Zakai type stationary approximation to the fractional Brownian ...
In this thesis, we investigate the properties of solution to the stochastic differential equation dr...
AbstractWe study pathwise approximation of scalar stochastic differential equations with additive fr...
AbstractIn this note, a diffusion approximation result is shown for stochastic differential equation...
We prove weak existence for multi-dimensional SDEs with distributional drift driven by a fractional ...
We prove weak existence for multi-dimensional SDEs with distributional drift driven by a fractional ...
We prove weak existence for multi-dimensional SDEs with distributional drift driven by a fractional ...
We investigate the problem of the rate of convergence to equilibrium for ergodic stochastic differen...
The goal of this paper is to show that under some assumptions, for a d-dimensional fractional Browni...
AbstractWe consider a stochastic differential equation involving a pathwise integral with respect to...
Fractional stochastic differential equation (FSDE)-based random processes are used in a wide spectru...
We consider the time discretization of fractional stochastic wave equation with Gaussian noise, whic...
AbstractWe study the approximation of stochastic differential equations driven by a fractional Brown...
For a stochastic differential equation driven by a fractional Brownian motion with Hurst parameter H...
In this article, we introduce a Wong-Zakai type stationary approximation to the fractional Brownian ...
In this article, we introduce a Wong-Zakai type stationary approximation to the fractional Brownian ...
In this thesis, we investigate the properties of solution to the stochastic differential equation dr...
AbstractWe study pathwise approximation of scalar stochastic differential equations with additive fr...
AbstractIn this note, a diffusion approximation result is shown for stochastic differential equation...
We prove weak existence for multi-dimensional SDEs with distributional drift driven by a fractional ...
We prove weak existence for multi-dimensional SDEs with distributional drift driven by a fractional ...
We prove weak existence for multi-dimensional SDEs with distributional drift driven by a fractional ...
We investigate the problem of the rate of convergence to equilibrium for ergodic stochastic differen...
The goal of this paper is to show that under some assumptions, for a d-dimensional fractional Browni...
AbstractWe consider a stochastic differential equation involving a pathwise integral with respect to...
Fractional stochastic differential equation (FSDE)-based random processes are used in a wide spectru...
We consider the time discretization of fractional stochastic wave equation with Gaussian noise, whic...