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Bootstrap Inference for the Finite Population Mean under Complex Sampling Designs

Zhonglei Wang, Liuhua Peng, Jae Kwang Kim

2022Journal of the Royal Statistical Society Series B (Statistical Methodology)14 citationsDOIOpen Access PDF

Abstract

Abstract Bootstrap is a useful computational tool for statistical inference, but it may lead to erroneous analysis under complex survey sampling. In this paper, we propose a unified bootstrap method for stratified multi-stage cluster sampling, Poisson sampling, simple random sampling without replacement and probability proportional to size sampling with replacement. In the proposed bootstrap method, we first generate bootstrap finite populations, apply the same sampling design to each bootstrap population to get a bootstrap sample, and then apply studentization. The second-order accuracy of the proposed bootstrap method is established by the Edgeworth expansion. Simulation studies confirm that the proposed bootstrap method outperforms the commonly used Wald-type method in terms of coverage, especially when the sample size is not large.

Topics & Concepts

Poisson samplingCluster samplingSampling (signal processing)Sampling designSimple random sampleStratified samplingStatisticsInferenceSample size determinationPoisson distributionStatistical inferenceMathematicsSlice samplingPopulationComputer scienceBootstrapping (finance)Importance samplingEconometricsArtificial intelligenceMonte Carlo methodComputer visionDemographyFilter (signal processing)SociologySurvey Sampling and Estimation TechniquesStatistical Methods and InferenceStatistical Methods and Bayesian Inference
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