This paper gives a review of recent progress in the design of numerical methods for computing the trajectories (sample paths) of solutions to stochastic differential equations. We give a brief survey of the area focusing on a number of application areas where approximations to strong solutions are important, with a particular focus on computational biology applications, and give the necessary analytical tools for understanding some of the important concepts associated with stochastic processes. We present the stochastic Taylor series expansion as the fundamental mechanism for constructing effective numerical methods, give general results that relate local and global order of convergence and mention the Magnus expansion as a mechanism for de...
This paper demonstrates a derivation of stochastic Taylor methods for stochastic differential equati...
AbstractWe introduce a variable step size algorithm for the pathwise numerical approximation of solu...
Often when solving stochastic differential equations numerically, many simulations must be generated...
This paper gives a review of recent progress in the design of numerical methods for computing the tr...
This paper gives a review of recent progress in the design of numerical methods for computing the tr...
This paper gives a review of recent progress in the design of numerical methods for computing the tr...
The development of numerical methods for stochastic differential equations has intensified over the ...
Numerical Methods for Simulation of Stochastic Differential Equations Stochastic differential equati...
We considered strong convergent stochastic schemes for the simulation of stochastic differential equ...
Numerical methods for stochastic differential equations, including Taylor expansion approximations, ...
This thesis explains the theoretical background of stochastic differential equations in one dimensio...
Abstract. We present numerical schemes for the strong solution of linear stochastic differential equ...
This thesis consists of four papers: <p>Paper I is an overview of recent techniques in strong numeri...
Often when solving stochastic differential equations numerically, many simulations must be generated...
Often when solving stochastic differential equations numerically, many simulations must be generated...
This paper demonstrates a derivation of stochastic Taylor methods for stochastic differential equati...
AbstractWe introduce a variable step size algorithm for the pathwise numerical approximation of solu...
Often when solving stochastic differential equations numerically, many simulations must be generated...
This paper gives a review of recent progress in the design of numerical methods for computing the tr...
This paper gives a review of recent progress in the design of numerical methods for computing the tr...
This paper gives a review of recent progress in the design of numerical methods for computing the tr...
The development of numerical methods for stochastic differential equations has intensified over the ...
Numerical Methods for Simulation of Stochastic Differential Equations Stochastic differential equati...
We considered strong convergent stochastic schemes for the simulation of stochastic differential equ...
Numerical methods for stochastic differential equations, including Taylor expansion approximations, ...
This thesis explains the theoretical background of stochastic differential equations in one dimensio...
Abstract. We present numerical schemes for the strong solution of linear stochastic differential equ...
This thesis consists of four papers: <p>Paper I is an overview of recent techniques in strong numeri...
Often when solving stochastic differential equations numerically, many simulations must be generated...
Often when solving stochastic differential equations numerically, many simulations must be generated...
This paper demonstrates a derivation of stochastic Taylor methods for stochastic differential equati...
AbstractWe introduce a variable step size algorithm for the pathwise numerical approximation of solu...
Often when solving stochastic differential equations numerically, many simulations must be generated...