We propose a simple hybrid method which makes use of both saddlepoint and importance sampling techniques to approximate the bootstrap tail probability of an M-estimator. The method does not rely on explicit formula of the Lugannani-Rice type, and is computationally more efficient than both uniform bootstrap sampling and importance resampling suggested in earlier literature. The method is also applied to construct confidence intervals for smooth functions of M-estimands.link_to_subscribed_fulltex
An extension of Monte Carlo methods to confidence interval estimation, using the bootstrap technique...
A bootstrap method for generating confidence intervals in linear models is suggested. The method is ...
It is widely known that bootstrap failure can often be remedied by using a technique known as the 'm...
grantor: University of TorontoThe bootstrap is a computational method of statistical infer...
grantor: University of TorontoThe bootstrap is a computational method of statistical infer...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
We obtain marginal tail area approximations for the one-dimensional test statistic based on the appr...
This article reviews and applies saddlepoint approximations to studentized confidence intervals base...
We propose two new methods for the construction of approximate iterated bootstrap confidence interva...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
We propose two substantive extensions to the saddlepoint-based bootstrap (SPBB) methodology, whereby...
Abstract no. 307546M-estimation under non-standard conditions often yields M-estimators converging w...
Abstract The parametric bootstrap can be used for the efficient computation of Bayes posterior distr...
The nested bootstrap is a computer-intensive technique for reducing the statistical error in the ord...
An extension of Monte Carlo methods to confidence interval estimation, using the bootstrap technique...
A bootstrap method for generating confidence intervals in linear models is suggested. The method is ...
It is widely known that bootstrap failure can often be remedied by using a technique known as the 'm...
grantor: University of TorontoThe bootstrap is a computational method of statistical infer...
grantor: University of TorontoThe bootstrap is a computational method of statistical infer...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
We obtain marginal tail area approximations for the one-dimensional test statistic based on the appr...
This article reviews and applies saddlepoint approximations to studentized confidence intervals base...
We propose two new methods for the construction of approximate iterated bootstrap confidence interva...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
We propose two substantive extensions to the saddlepoint-based bootstrap (SPBB) methodology, whereby...
Abstract no. 307546M-estimation under non-standard conditions often yields M-estimators converging w...
Abstract The parametric bootstrap can be used for the efficient computation of Bayes posterior distr...
The nested bootstrap is a computer-intensive technique for reducing the statistical error in the ord...
An extension of Monte Carlo methods to confidence interval estimation, using the bootstrap technique...
A bootstrap method for generating confidence intervals in linear models is suggested. The method is ...
It is widely known that bootstrap failure can often be remedied by using a technique known as the 'm...