In this paper, we analyze the strong convergence and stability of the Compensated Splite-step $theta$ (CSS$theta$) and Forward-Backward Euler-Maruyama (FBEM) methods for Numerical solutions of Stochastic Differential Equations with jumps (SDEwJs),where $sqrt{2}-1leqthetaleq 1$. The drift term $f$ has a one-sided Lipschitz condition, the diffusion term $g$ and jump term $h$ satisfy global Lipschitz condition. Furthermore, we discuss about the stability of SDEwJs with constant coefficients and present new useful relations between their coefficients. Finally we examine the correctness and efficiency of theorems with some examples.In this paper, we analyze the strong convergence and stability of the Compensated Splite-step $theta$ (CSS$theta$...
In this paper, we are interested in numerical solutions of stochastic functional differential equati...
AbstractWe generalise the current theory of optimal strong convergence rates for implicit Euler-base...
AbstractIn this paper, we are interested in numerical solutions of stochastic functional differentia...
We present and analyse two implicit methods for Ito stochastic differential equations (SDEs) with Po...
In this work, we generalize the current theory of strong convergence rates for the backward Euler–Ma...
Asymptotic linear stability is studied for stochastic dierential equations (SDEs) that incorporate P...
AbstractThis paper is concerned with exponential mean square stability of the classical stochastic t...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
AbstractIn this paper, we are concerned with the numerical approximation of stochastic differential ...
Influenced by Higham et al. (2003), several numerical methods have been developed to study the stron...
AbstractIn this paper, we construct a new split-step method for solving stochastic differential equa...
Abstract In this paper, our aim is to develop a compensated split-step θ (CSSθ) method for nonlinear...
In this article, we construct and analyse an explicit numerical splitting method for a class of semi...
We are interested in the strong convergence and almost sure stability of Euler-Maruyama (EM) type ap...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
In this paper, we are interested in numerical solutions of stochastic functional differential equati...
AbstractWe generalise the current theory of optimal strong convergence rates for implicit Euler-base...
AbstractIn this paper, we are interested in numerical solutions of stochastic functional differentia...
We present and analyse two implicit methods for Ito stochastic differential equations (SDEs) with Po...
In this work, we generalize the current theory of strong convergence rates for the backward Euler–Ma...
Asymptotic linear stability is studied for stochastic dierential equations (SDEs) that incorporate P...
AbstractThis paper is concerned with exponential mean square stability of the classical stochastic t...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
AbstractIn this paper, we are concerned with the numerical approximation of stochastic differential ...
Influenced by Higham et al. (2003), several numerical methods have been developed to study the stron...
AbstractIn this paper, we construct a new split-step method for solving stochastic differential equa...
Abstract In this paper, our aim is to develop a compensated split-step θ (CSSθ) method for nonlinear...
In this article, we construct and analyse an explicit numerical splitting method for a class of semi...
We are interested in the strong convergence and almost sure stability of Euler-Maruyama (EM) type ap...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
In this paper, we are interested in numerical solutions of stochastic functional differential equati...
AbstractWe generalise the current theory of optimal strong convergence rates for implicit Euler-base...
AbstractIn this paper, we are interested in numerical solutions of stochastic functional differentia...