On the Simple Inverse Sampling with Replacement
Author(s) -
Mohammad Mohammadi
Publication year - 2015
Publication title -
journal of statistical research of iran
Language(s) - English
Resource type - Journals
ISSN - 1735-1294
DOI - 10.18869/acadpub.jsri.11.2.191
Subject(s) - estimator , mathematics , inverse , sampling (signal processing) , simple (philosophy) , statistics , population , bias of an estimator , computer science , minimum variance unbiased estimator , medicine , philosophy , geometry , filter (signal processing) , epistemology , computer vision , environmental health
In this paper we derive some unbiased estimators of the population mean under simple inverse sampling with replacement, using the class of Hansen-Hurwitz and Horvitz-Thompson type estimators and the poststratification approach. We also compare the efficiency of resulting estimators together with Murthy’s estimator. We show that in despite of general belief, the strategy consisting of inverse sampling with Murthy’s estimator is highly less efficient when the target population is rare, whereas it can be more efficient when subpopulation means are closed. In fact, for inverse sampling to be highly efficient design one should know the population structure and then use an appropriate estimator.
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