Bootstrap is a useful tool for making statistical inference, but it may provide erroneous results under complex survey sampling. Most studies about bootstrap-based inference are developed under simple random sampling and stratified random sampling. In this paper, we propose a unified bootstrap method applicable to some complex sampling designs, including Poisson sampling and probability-proportional-to-size sampling. Two main features of the proposed bootstrap method are that studentization is used to make inference, and the finite population is bootstrapped based on a multinomial distribution by incorporating the sampling information. We show that the proposed bootstrap method is second-order accurate using the Edgeworth expansion. Two sim...
Abstract: The bootstrap method works for both smooth and nonsmooth statistics, and replaces theoreti...
Since bootstrap samples are simple random samples with replacement from the original sample, the inf...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
Bootstrap is a useful tool for making statistical inference, but it may provide erroneous results un...
<p>The finite population bootstrap method is used as a computer-<br />intensive alternative to estim...
The bootstrap approach to statistical inference is described in Efron (1982). The method has wide ap...
A collection of six novel bootstrap algorithms, applied to probability-proportional-to-size samples,...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
This paper provides a method for determining the exact finite sample properties of the bootstrap. Pr...
In sampling finite populations, several resampling schemes have been proposed. The common starting p...
International audienceThe bootstrap is a technique for performing statistical inference. The underly...
In complex survey sampling every population unit is assigned a specific probability to be included ...
In complex designs, classical bootstrap methods result in a biased variance estimator when the samp...
This Phd deals with Bootstrap methods for finite population sampling. The first chapter introduces s...
Consider a finite population from which the stratified sample with simple random sample without repl...
Abstract: The bootstrap method works for both smooth and nonsmooth statistics, and replaces theoreti...
Since bootstrap samples are simple random samples with replacement from the original sample, the inf...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
Bootstrap is a useful tool for making statistical inference, but it may provide erroneous results un...
<p>The finite population bootstrap method is used as a computer-<br />intensive alternative to estim...
The bootstrap approach to statistical inference is described in Efron (1982). The method has wide ap...
A collection of six novel bootstrap algorithms, applied to probability-proportional-to-size samples,...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
This paper provides a method for determining the exact finite sample properties of the bootstrap. Pr...
In sampling finite populations, several resampling schemes have been proposed. The common starting p...
International audienceThe bootstrap is a technique for performing statistical inference. The underly...
In complex survey sampling every population unit is assigned a specific probability to be included ...
In complex designs, classical bootstrap methods result in a biased variance estimator when the samp...
This Phd deals with Bootstrap methods for finite population sampling. The first chapter introduces s...
Consider a finite population from which the stratified sample with simple random sample without repl...
Abstract: The bootstrap method works for both smooth and nonsmooth statistics, and replaces theoreti...
Since bootstrap samples are simple random samples with replacement from the original sample, the inf...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...