On the Generalized Bootstrap for Sample Surveys with Special Attention to Poisson Sampling |
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Authors: | Jean‐François Beaumont Zdenek Patak |
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Institution: | 1. Statistical Research and Innovation Division, Statistics Canada, 100 Tunney's Pasture Driveway, R.H. Coats Bldg., 16‐th floor, Ottawa, Ontario, K1A 0T6, Canada E‐mail: jean‐francois.beaumont@statcan.gc.ca;2. Business Survey Methods Division, Statistics Canada, 100 Tunney's Pasture Driveway, R.H. Coats Bldg., 17‐th floor, Ottawa, Ontario, K1A 0T6, Canada E‐mail: zdenek.patak@statcan.gc.ca |
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Abstract: | We study the generalized bootstrap technique under general sampling designs. We focus mainly on bootstrap variance estimation but we also investigate the empirical properties of bootstrap confidence intervals obtained using the percentile method. Generalized bootstrap consists of randomly generating bootstrap weights so that the first two (or more) design moments of the sampling error are tracked by the corresponding bootstrap moments. Most bootstrap methods in the literature can be viewed as special cases. We discuss issues such as the choice of the distribution used to generate bootstrap weights, the choice of the number of bootstrap replicates, and the potential occurrence of negative bootstrap weights. We first describe the generalized bootstrap for the linear Horvitz‐Thompson estimator and then consider non‐linear estimators such as those defined through estimating equations. We also develop two ways of bootstrapping the generalized regression estimator of a population total. We study in greater depth the case of Poisson sampling, which is often used to select samples in Price Index surveys conducted by national statistical agencies around the world. For Poisson sampling, we consider a pseudo‐population approach and show that the resulting bootstrap weights capture the first three design moments of the sampling error. A simulation study and an example with real survey data are used to illustrate the theory. |
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Keywords: | Bootstrap weight estimating equation generalized regression estimator pseudo‐population variance estimation weighted bootstrap |
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