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Empirical Bayes Estimation of Small Area Means under a Nested Error Linear Regression Model with Measurement Errors in the Covariates
Authors:MAHMOUD TORABI  GAURI S. DATTA   J. N. K. RAO
Affiliation:Department of Pediatrics, University of Alberta;
Department of Statistics, University of Georgia;
School of Mathematics and Statistics, Carleton University
Abstract:Abstract.  Previously, small area estimation under a nested error linear regression model was studied with area level covariates subject to measurement error. However, the information on observed covariates was not used in finding the Bayes predictor of a small area mean. In this paper, we first derive the fully efficient Bayes predictor by utilizing all the available data. We then estimate the regression and variance component parameters in the model to get an empirical Bayes (EB) predictor and show that the EB predictor is asymptotically optimal. In addition, we employ the jackknife method to obtain an estimator of mean squared prediction error (MSPE) of the EB predictor. Finally, we report the results of a simulation study on the performance of our EB predictor and associated jackknife MSPE estimators. Our results show that the proposed EB predictor can lead to significant gain in efficiency over the previously proposed EB predictor.
Keywords:Bayes risk    empirical Bayes    jackknife method    mean squared prediction error    nested error model
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