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Parametric inference based on judgment post stratified samples
Authors:Omer Ozturk  KS Sultan  ME Moshref
Institution:1. The Ohio State University, Department of Statistics, 1958 Neil Avenue, Columbus, OH 43210, United States;2. King Saud University, Department of Statistics and OR, Riyadh 11451, Saudi Arabia;3. Department of Mathematics, Faculty of Science, Al-Azhar University, Nasr City, Cairo 11884, Egypt
Abstract:In this paper, we consider a judgment post stratified (JPS) sample of set size H from a location and scale family of distributions. In a JPS sample, ranks of measured units are random variables. By conditioning on these ranks, we derive the maximum likelihood (MLEs) and best linear unbiased estimators (BLUEs) of the location and scale parameters. Since ranks are random variables, by considering the conditional distributions of ranks given the measured observations we construct Rao-Blackwellized version of MLEs and BLUEs. We show that Rao-Blackwellized estimators always have smaller mean squared errors than MLEs and BLUEs in a JPS sample. In addition, the paper provides empirical evidence for the efficiency of the proposed estimators through a series of Monte Carlo simulations.
Keywords:62D05  94A20  62G05
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