Better Confidence Intervals for Importance Sampling

Halis Sak, Wolfgang Hörmann, Josef Leydold

Publication: Working/Discussion PaperWU Working Paper

83 Downloads (Pure)

Abstract

It is well known that for highly skewed distributions the standard method of using the t statistic for the confidence interval of the mean does not give robust results. This is an important problem for importance sampling (IS) as its final distribution is often skewed due to a heavy tailed weight distribution. In this paper, we first explain Hall's transformation and its variants to correct the confidence interval of the mean and then evaluate the performance of these methods for two numerical examples from finance which have closed-form solutions. Finally, we assess the performance of these methods for credit risk examples. Our numerical results suggest that Hall's transformation or one of its variants can be safely used in correcting the two-sided confidence intervals of financial simulations.
Original languageEnglish
DOIs
Publication statusPublished - 1 Mar 2010

Publication series

SeriesResearch Report Series / Department of Statistics and Mathematics
Number106

WU Working Paper Series

  • Research Report Series / Department of Statistics and Mathematics

Cite this