We study Runge-Kutta methods for rough differential equations which can be used to calculate solutions to stochastic differential equations driven by processes that are rougher than a Brownian motion. We use a Taylor series representation (B-series) for both the numerical scheme and the solution of the rough differential equation in order to determine conditions that guarantee the desired order of the local error for the underlying Runge-Kutta method. Subsequently, we prove the order of the global error given the local rate. In addition, we simplify the numerical approximation by introducing a Runge-Kutta scheme that is based on the increments of the driver of the rough differential equation. This simplified method can be easily implemented...
In this paper, general order conditions and a global convergence proof are given for stochastic Rung...
We present a new pathwise approximation method for stochastic differential equations driven by Brow...
Abstract. Discrete approximations to solutions of stochastic differential equations are well-known t...
The main motivation behind writing this thesis was to construct numerical methods to approximate sol...
The paper connects asymptotic estimations of [3] and [7] with the Rough Paths perspective ([13], [14...
We study a class of semi-implicit Taylor-type numerical methods that are easy to implement and desig...
International audienceThis paper is devoted to the study of numerical approximation schemes for a cl...
Discrete approximations to solutions of stochastic differential equations are well-known to converge...
We consider two discrete schemes for studying and approximating stochastic differential equations (...
The purpose of this article is to solve rough differential equations with the theory of regularity ...
International audienceThe non-linear sewing lemma constructs flows of rough differential equations f...
AbstractWe consider controlled ordinary differential equations and give new estimates for higher ord...
Ordinary differential equations (ODEs) have been widely used to model the dynamical behaviour of bio...
AbstractThe way to obtain deterministic Runge–Kutta methods from Taylor approximations is generalize...
Hofmanová M. On the Rough Gronwall lemma and it's aplications. In: Eberle A, Grothaus M, Hoh W, Kass...
In this paper, general order conditions and a global convergence proof are given for stochastic Rung...
We present a new pathwise approximation method for stochastic differential equations driven by Brow...
Abstract. Discrete approximations to solutions of stochastic differential equations are well-known t...
The main motivation behind writing this thesis was to construct numerical methods to approximate sol...
The paper connects asymptotic estimations of [3] and [7] with the Rough Paths perspective ([13], [14...
We study a class of semi-implicit Taylor-type numerical methods that are easy to implement and desig...
International audienceThis paper is devoted to the study of numerical approximation schemes for a cl...
Discrete approximations to solutions of stochastic differential equations are well-known to converge...
We consider two discrete schemes for studying and approximating stochastic differential equations (...
The purpose of this article is to solve rough differential equations with the theory of regularity ...
International audienceThe non-linear sewing lemma constructs flows of rough differential equations f...
AbstractWe consider controlled ordinary differential equations and give new estimates for higher ord...
Ordinary differential equations (ODEs) have been widely used to model the dynamical behaviour of bio...
AbstractThe way to obtain deterministic Runge–Kutta methods from Taylor approximations is generalize...
Hofmanová M. On the Rough Gronwall lemma and it's aplications. In: Eberle A, Grothaus M, Hoh W, Kass...
In this paper, general order conditions and a global convergence proof are given for stochastic Rung...
We present a new pathwise approximation method for stochastic differential equations driven by Brow...
Abstract. Discrete approximations to solutions of stochastic differential equations are well-known t...