Perez and Pontius (J Stat Comput Simul 76:755-764, 2006) introduced several bootstrap methods under adaptive cluster sampling using a Horvitz-Thompson type estimator. Using a simulation study, they showed that their proposed methods provide confidence intervals with highly understated coverage rates. In this article, we first show that their bootstrap methods provide biased bootstrap estimates. We then define two bootstrap methods, based on the method of Gross (Proceeding of the survey research methods section. American Statistical Association, Alexandria, VA, pp 181-184, 1980) and Bootstrap With Replacement, that provide unbiased bootstrap estimates of the population mean with bootstrap variances matching the corresponding unbiased varianc...
Confidence intervals based on cluster-robust covariance matrices can be constructed in many ways. In...
<p>The finite population bootstrap method is used as a computer-<br />intensive alternative to estim...
Although it is common to refer to “the bootstrap, ” there are actually a great many different bootst...
Adaptive cluster sampling (ACS) is an efficient sampling design for estimating parameters of rare an...
Chambers and Dorfman (2002) constructed bootstrap confidence intervals in model based estimation for...
In complex survey sampling every population unit is assigned a specific probability to be included ...
A collection of six novel bootstrap algorithms, applied to probability-proportional-to-size samples,...
This article describes a new Stata command, tsb, for performing a stratified two-stage nonparametri...
This article describes a new Stata command, tsb, for performing a stratified two-stage nonparametric...
We construct 90% normal, percentile, and bias-corrected and accelerated confidence intervals using a...
Abstract Background This work has investigated under what conditions confidence intervals around the...
The introduction of the bootstrap methods by Efron (1979) enables many empirical researches, which w...
1. Researchers often want to place a confidence interval around estimated parameter values calculate...
Confidence intervals based on cluster-robust covariance matrices can be constructed in many w...
The bootstrap approach to statistical inference is described in Efron (1982). The method has wide ap...
Confidence intervals based on cluster-robust covariance matrices can be constructed in many ways. In...
<p>The finite population bootstrap method is used as a computer-<br />intensive alternative to estim...
Although it is common to refer to “the bootstrap, ” there are actually a great many different bootst...
Adaptive cluster sampling (ACS) is an efficient sampling design for estimating parameters of rare an...
Chambers and Dorfman (2002) constructed bootstrap confidence intervals in model based estimation for...
In complex survey sampling every population unit is assigned a specific probability to be included ...
A collection of six novel bootstrap algorithms, applied to probability-proportional-to-size samples,...
This article describes a new Stata command, tsb, for performing a stratified two-stage nonparametri...
This article describes a new Stata command, tsb, for performing a stratified two-stage nonparametric...
We construct 90% normal, percentile, and bias-corrected and accelerated confidence intervals using a...
Abstract Background This work has investigated under what conditions confidence intervals around the...
The introduction of the bootstrap methods by Efron (1979) enables many empirical researches, which w...
1. Researchers often want to place a confidence interval around estimated parameter values calculate...
Confidence intervals based on cluster-robust covariance matrices can be constructed in many w...
The bootstrap approach to statistical inference is described in Efron (1982). The method has wide ap...
Confidence intervals based on cluster-robust covariance matrices can be constructed in many ways. In...
<p>The finite population bootstrap method is used as a computer-<br />intensive alternative to estim...
Although it is common to refer to “the bootstrap, ” there are actually a great many different bootst...