Confidence Intervals for Randomized Quasi-Monte Carlo Estimators.

Winter Simulation Conference(2023)

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摘要
Randomized Quasi-Monte Carlo (RQMC) methods provide unbiased estimators whose variance often converges at a faster rate than standard Monte Carlo as a function of the sample size. However, computing valid confidence intervals is challenging because the observations from a single randomization are dependent and the central limit theorem does not ordinarily apply. A natural solution is to replicate the RQMC process independently a small number of times to estimate the variance and use a standard confidence interval based on a normal or Student t distribution. We investigate the standard Student t approach and two bootstrap methods for getting nonparametric confidence intervals for the mean using a modest number of replicates. Our main conclusion is that intervals based on the Student t distribution are more reliable than even the bootstrap t method on the integration problems arising from RQMC.
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关键词
Confidence Interval,Student’s T,Bootstrap Samples,Central Limit Theorem,Standard Intervals,Standard Confidence Intervals,Histogram,Skewness,Random Variables,Variance Estimates,T-score,Random Method,Random Values,Random Points,Symmetric Distribution,Interval Length,Discrete Distribution,Mean Dimensions,Discrete Random Variable,Finite Variance,Percentile Method,Unit Cube,Normal Theory,Gaussian Data
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