Variance Estimation under Two-Phase Sampling

Variance Estimation under Two-Phase Sampling

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Article ID: iaor2016320
Volume: 42
Issue: 4
Start Page Number: 1078
End Page Number: 1091
Publication Date: Dec 2015
Journal: Scandinavian Journal of Statistics
Authors:
Keywords: statistics: sampling, simulation
Abstract:

We consider the variance estimation of the weighted likelihood estimator (WLE) under two‐phase stratified sampling without replacement. Asymptotic variance of the WLE in many semiparametric models contains unknown functions or does not have a closed form. The standard method of the inverse probability weighted (IPW) sample variances of an estimated influence function is then not available in these models. To address this issue, we develop the variance estimation procedure for the WLE in a general semiparametric model. The phase I variance is estimated by taking a numerical derivative of the IPW log likelihood. The phase II variance is estimated based on the bootstrap for a stratified sample in a finite population. Despite a theoretical difficulty of dependent observations due to sampling without replacement, we establish the (bootstrap) consistency of our estimators. Finite sample properties of our method are illustrated in a simulation study.

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