Efficient importance sampling for Monte Carlo evaluation of exceedance probabilities

Citation
Chan, Hock Peng et Lai, Tze Leung Hock Peng, Efficient importance sampling for Monte Carlo evaluation of exceedance probabilities, Annals of applied probability , 17(2), 2007, pp. 440-473
ISSN journal
10505164
Volume
17
Issue
2
Year of publication
2007
Pages
440 - 473
Database
ACNP
SICI code
Abstract
Large deviation theory has provided important clues for the choice of importance sampling measures for Monte Carlo evaluation of exceedance probabilities. However, Glasserman and Wang [Ann. Appl. Probab. 7 (1997) 731.746] have given examples in which importance sampling measures that are consistent with large deviations can perform much worse than direct Monte Carlo. We address this problem by using certain mixtures of exponentially twisted measures for importance sampling. Their asymptotic optimality is established by using a new class of likelihood ratio martingales and renewal theory.