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Published July 26, 2002 | Published
Journal Article Open

Strong Convergence of Euler-Type Methods for Nonlinear Stochastic Differential Equations

Abstract

Traditional finite-time convergence theory for numerical methods applied to stochastic differential equations (SDEs) requires a global Lipschitz assumption on the drift and diffusion coefficients. In practice, many important SDE models satisfy only a local Lipschitz property and, since Brownian paths can make arbitrarily large excursions, the global Lipschitz-based theory is not directly relevant. In this work we prove strong convergence results under less restrictive conditions. First, we give a convergence result for Euler-Maruyama requiring only that the SDE is locally Lipschitz and that the pth moments of the exact and numerical solution are bounded for some p > 2. As an application of this general theory we show that an implicit variant of Euler-Maruyama converges if the diffusion coefficient is globally Lipschitz, but the drift coefficient satisfies only a one-sided Lipschitz condition; this is achieved by showing that the implicit method has bounded moments and may be viewed as an Euler-Maruyama approximation to a perturbed SDE of the same form. Second, we show that the optimal rate of convergence can be recovered if the drift coefficient is also assumed to behave like a polynomial.

Additional Information

© 2002 Society for Industrial and Applied Mathematics. Received by the editors May 18, 2001; accepted for publication (in revised form) March 1, 2002; published electronically August 28, 2002. Published online: 26 July 2006. The research of this author was supported by the Biotechnology and Biological Sciences Research Council of the UK under grant 78/MMI09712. The research of this author was supported by the Engineering and Physical Sciences Research Council of the UK under grant GR/N00340.

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