arXiv:0909.3333 [math.PR]AbstractReferencesReviewsResources
On importance sampling with mixtures for random walks with heavy tails
Published 2009-09-17Version 1
Importance sampling algorithms for heavy-tailed random walks are considered. Using a specification with algorithms based on mixtures of the original distribution with some other distribution, sufficient conditions for obtaining bounded relative error are presented. It is proved that mixture algorithms of this kind can achieve asymptotically optimal relative error. Some examples of mixture algorithms are presented, including mixture algorithms using a scaling of the original distribution, and the bounds of the relative errors are calculated. The algorithms are evaluated numerically in a simple setting.
Categories: math.PR
Related articles: Most relevant | Search more
Importance sampling for McKean-Vlasov SDEs
arXiv:1511.01437 [math.PR] (Published 2015-11-04)
The sample size required in importance sampling
Poisson Statistics for the Largest Eigenvalues of Wigner Random Matrices with Heavy Tails