...
首页> 外文期刊>The Annals of applied probability: an official journal of the Institute of Mathematical Statistics >Divergence of the multilevel Monte Carlo Euler method for nonlinear stochastic differential equations
【24h】

Divergence of the multilevel Monte Carlo Euler method for nonlinear stochastic differential equations

机译:非线性随机微分方程的多级蒙特卡罗欧拉方法的散度

获取原文
           

摘要

The Euler-Maruyama scheme is known to diverge strongly and numerically weakly when applied to nonlinear stochastic differential equations (SDEs) with superlinearly growing and globally one-sided Lipschitz continuous drift coefficients. Classical Monte Carlo simulations do, however, not suffer from this divergence behavior of Euler's method because this divergence behavior happens on rare events. Indeed, for such nonlinear SDEs the classical Monte Carlo Euler method has been shown to converge by exploiting that the Euler approximations diverge only on events whose probabilities decay to zero very rapidly. Significantly more efficient than the classical Monte Carlo Euler method is the recently introduced multilevel Monte Carlo Euler method. The main observation of this article is that this multilevel Monte Carlo Euler method does-in contrast to classical Monte Carlo methods-not converge in general in the case of such nonlinear SDEs. More precisely, we establish divergence of the multilevel Monte Carlo Euler method for a family of SDEs with superlinearly growing and globally one-sided Lipschitz continuous drift coefficients. In particular, the multilevelMonte Carlo Euler method diverges for these nonlinear SDEs on an event that is not at all rare but has probability one. As a consequence for applications, we recommend not to use the multilevel Monte Carlo Euler method for SDEs with superlinearly growing nonlinearities. Instead we propose to combine the multilevelMonte Carlo method with a slightly modified Euler method. More precisely, we show that the multilevel Monte Carlo method combined with a tamed Euler method converges for nonlinear SDEs with globally one-sided Lipschitz continuous drift coefficients and preserves its strikingly higher order convergence rate from the Lipschitz case.
机译:当将Euler-Maruyama方案应用于具有超线性增长且整体为单侧Lipschitz连续漂移系数的非线性随机微分方程(SDE)时,它会在强和数值上微分。然而,经典的蒙特卡洛模拟并没有遭受欧拉方法的这种发散行为,因为这种发散行为发生在罕见事件上。的确,对于这种非线性SDE,经典的蒙特卡洛欧拉方法已经证明是通过利用欧拉近似仅在概率非常快地衰减为零的事件上发散而收敛的。最近引入的多级蒙特卡洛·欧拉方法比经典的蒙特卡洛·欧拉方法更有效。本文的主要观察结果是,与经典的蒙特卡洛方法相比,这种多级蒙特卡洛Euler方法确实可以在这种非线性SDE的情况下收敛。更准确地说,我们为具有超线性增长和全局单侧Lipschitz连续漂移系数的SDE系列建立了多级蒙特卡洛Euler方法的散度。特别是,对于并非完全罕见但具有概率为1的事件,多级蒙特卡洛欧拉方法对这些非线性SDE会发散。因此,对于应用程序,建议不要对非线性度超线性增长的SDE使用多级Monte Carlo Euler方法。相反,我们建议将多级蒙特卡罗方法与稍微修改的欧拉方法结合起来。更准确地说,我们表明,多级蒙特卡洛方法与驯服的欧拉方法相结合,可以求解具有单侧Lipschitz连续漂移系数的非线性SDE,并且在Lipschitz情况下可以保持其惊人的高阶收敛速度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号