Preserving positivity in solutions of discretised stochastic differential equations

作者:

Highlights:

摘要

We consider the Euler discretisation of a scalar linear test equation with positive solutions and show for both strong and weak approximations that the probability of positivity over any finite interval of simulation tends to unity as the step size approaches zero. Although a.s. positivity in an approximation is impossible to achieve, we develop for the strong (Maruyama) approximation an asymptotic estimate of the number of mesh points required for positivity as our tolerance of non-positive trajectories tends to zero, and examine the effectiveness of this estimate in the context of practical numerical simulation. We show how this analysis generalises to equations with a drift coefficient that may display a high level of nonlinearity, but which must be linearly bounded from below (i.e. when acting towards zero), and a linearly bounded diffusion coefficient. Finally, in the linear case we develop a refined asymptotic estimate that is more useful as an a priori guide to the number of mesh points required to produce positive approximations with a given probability.

论文关键词:Euler–Maruyama method,Numerical discretisation,Stochastic differential equation,Stochastic difference equation,Positive solution,Monte Carlo simulation

论文评审过程:Available online 18 June 2010.

论文官网地址:https://doi.org/10.1016/j.amc.2010.06.015