Importance sampling and statistical Romberg method

被引:5
作者
Ben Alaya, Mohamed [1 ]
Hajji, Kaouther [1 ]
Kebaier, Ahmed [1 ]
机构
[1] Univ Paris 04, Univ Paris 13, CNRS, LAGA,UMR 7539, Villetaneuse, France
关键词
central limit theorem; Euler scheme; Heston model; Robbins-Monro; statistical Romberg method; stochastic algorithm; variance reduction; CONVERGENCE; ERROR;
D O I
10.3150/14-BEJ622
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
The efficiency of Monte Carlo simulations is significantly improved when implemented with variance reduction methods. Among these methods, we focus on the popular importance sampling technique based on producing a parametric transformation through a shift parameter theta. The optimal choice of theta is approximated using Robbins Monro procedures, provided that a nonexplosion condition is satisfied. Otherwise, one can use either a constrained Robbins Monro algorithm (see, e.g., Arouna (Monte Carlo Methods Appl. 10 (2004) 1-24) and Lelong (Statist. Probab. Lett. 78 (2008) 2632-2636)) or a more astute procedure based on an unconstrained approach recently introduced by Lemaire and Pages in (Ann. AppL Probab. 20 (2010) 1029-1067). In this article, we develop a new algorithm based on a combination of the statistical Romberg method and the importance sampling technique. The statistical Romberg method introduced by Kebaier in (Ann. AppL Probab. 15 (2005) 2681-2705) is known for reducing efficiently the complexity compared to the classical Monte Carlo one. In the setting of discritized diffusions, we prove the almost sure convergence of the constrained and unconstrained versions of the Robbins Monro routine, towards the optimal shift theta* that minimizes the variance associated to the statistical Romberg method. Then, we prove a central limit theorem for the new algorithm that we called adaptive statistical Romberg method. Finally, we illustrate by numerical simulation the efficiency of our method through applications in option pricing for the Heston model.
引用
收藏
页码:1947 / 1983
页数:37
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