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Estimation in Surveys Using Conditional Inclusion Probabilities: Simple Random Sampling
Authors:Yves Tillé
Institution:CREST - ENSAI, École Nationale de la Statistique et de l'Analyse de l'Information, rue Blaise Pascal, Campus de Ker Lann, 35170 Bruz, France. e-mail:
Abstract:In survey sampling, auxiliary information on the population is often available. The aim of this paper is to develop a method which allows one to take into account such auxiliary information at the estimation stage by means of conditional bias adjustment. The basic idea is to attempt to construct a conditionally unbiased estimator. Four estimators that have a small conditional bias with respect to a statistic are proposed. It is shown that many of the estimators used in the literature in the case of simple random sampling can be obtained by using this estimation principle. The problem of simple random sampling with replacement, poststratification, and adjustment of a 2 x 2 dimensional contingency table to marginal totals are discussed in the conditional framework. Finally it is shown that the regression estimator can be viewed as an approximation of an application of the conditional principle.
Keywords:Simple random sampling  Conditional estimation  Weighted observation
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