Unbiased and almost unbiased ratio estimators of the population mean in ranked set sampling

被引:0
|
作者
Mohammad Jafari Jozani
Saeed Majidi
François Perron
机构
[1] University of Manitoba,Department of Statistics
[2] Allameh Tabatabaie University,Department of Statistics
[3] Université de Montréal,Département de Mathématiques et de Statistique
来源
Statistical Papers | 2012年 / 53卷
关键词
Almost unbiased; Auxiliary variable; Jackknife; Ranked set sampling; Ratio estimator; Relative efficiency; Simple random sampling; 62D05;
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摘要
In this paper we study the problem of reducing the bias of the ratio estimator of the population mean in a ranked set sampling (RSS) design. We first propose a jackknifed RSS-ratio estimator and then introduce a class of almost unbiased RSS-ratio estimators of the population mean. We also present an unbiased RSS-ratio estimator of the mean using the idea of Hartley and Ross (Nature 174:270–271, 1954) which performs better than its counterpart with simple random sample data. We show that under certain conditions the proposed unbiased and almost unbiased RSS-ratio estimators perform better than the commonly used (biased) RSS-ratio estimator in estimating the population mean in terms of the mean square error. The theoretical results are augmented by a simulation study using a wheat yield data set from the Iranian Ministry of Agriculture to demonstrate the practical benefits of our proposed ratio-type estimators relative to the RSS-ratio estimator in reducing the bias in estimating the average wheat production.
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页码:719 / 737
页数:18
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