Estimators for the Horvitz-Thompson Statistic Based on Some Posterior Distributions
The knowledge of first-order inclusion probabilities characterizing a sampling scheme is essential in design-based estimation of finite population totals. Sometimes the scheme is so complex that these probabilities cannot be computed exactly. Instead, both inclusion probabilities and corresponding sampling weights are simulated. One empirical Horvitz-Thompson estimator for a population total using simulation-based range-preserving estimates of sampling weights is obtained by applying the restricted maximum likelihood principle directly to each inclusion probability. The assumption of a prior distribution and the assessment of resulting posterior for a weight lead to two other estimators. One of them is the posterior mean estimator of the Horvitz-Thompson statistic. In a simulation involving Polish agricultural census data and a sequential fixed-cost sampling scheme, this estimator has attractive properties also from a frequentist point of view.
Year of publication: |
2014
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Authors: | Gamrot, Wojciech |
Published in: |
Mathematical Population Studies. - Taylor & Francis Journals, ISSN 0889-8480. - Vol. 21.2014, 1, p. 12-29
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Publisher: |
Taylor & Francis Journals |
Saved in:
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