We present and analyse two implicit methods for Ito stochastic differential equations (SDEs) with Poisson-driven jumps. The first method, SSBE, is a split-step extension of the backward Euler method. The second method, CSSBE, arises from the introduction of a compensated, martingale, form of the Poisson process. We show that both methods are amenable to rigorous analysis when a one-sided Lipschitz condition, rather than a more restrictive global Lipschitz condition, holds for the drift. Our analysis covers strong convergence and nonlinear stability. We prove that both methods give strong convergence when the drift coefficient is one-sided Lipschitz and the diffusion and jump coefficients are globally Lipschitz. On the way to proving these r...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
Implicit numerical methods such as the stochastic theta-method offer a practical way to approximate ...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
We present and analyse two implicit methods for Ito stochastic differential equations (SDEs) with Po...
In this paper, we analyze the strong convergence and stability of the Compensated Splite-step $theta...
Stochastic differential equations with Poisson driven jumps of random magnitude are popular as model...
Stochastic differential equations with Poisson driven jumps of random magnitude are popular as model...
Stochastic differential equations with Poisson driven jumps of random magnitude are popular as model...
Stochastic differential equations with Poisson driven jumps of random magnitude are popular as model...
Stochastic differential equations with Poisson driven jumps of random magnitude are popular as model...
This paper is concerned with the stability and numerical analysis of solution to highly nonlinear st...
In this paper, we use the truncated Euler–Maruyama (EM) method to study the finite time strong conve...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
Implicit numerical methods such as the stochastic theta-method offer a practical way to approximate ...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
We present and analyse two implicit methods for Ito stochastic differential equations (SDEs) with Po...
In this paper, we analyze the strong convergence and stability of the Compensated Splite-step $theta...
Stochastic differential equations with Poisson driven jumps of random magnitude are popular as model...
Stochastic differential equations with Poisson driven jumps of random magnitude are popular as model...
Stochastic differential equations with Poisson driven jumps of random magnitude are popular as model...
Stochastic differential equations with Poisson driven jumps of random magnitude are popular as model...
Stochastic differential equations with Poisson driven jumps of random magnitude are popular as model...
This paper is concerned with the stability and numerical analysis of solution to highly nonlinear st...
In this paper, we use the truncated Euler–Maruyama (EM) method to study the finite time strong conve...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...
Implicit numerical methods such as the stochastic theta-method offer a practical way to approximate ...
Traditional finite-time convergence theory for numerical methods applied to stochastic differential ...