Proportion estimation in ranked set sampling in the presence of tie information

被引:0
|
作者
Ehsan Zamanzade
Xinlei Wang
机构
[1] University of Isfahan,Department of Statistics
[2] Southern Methodist University,Department of Statistical Science
来源
Computational Statistics | 2018年 / 33卷
关键词
Imperfect ranking; Isotonic estimation; Maximum likelihood; Nonparametric estimation; Ranking tie; Relative efficiency;
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摘要
Ranked set sampling (RSS) is a statistical technique that uses auxiliary ranking information of unmeasured sample units in an attempt to select a more representative sample that provides better estimation of population parameters than simple random sampling. However, the use of RSS can be hampered by the fact that a complete ranking of units in each set must be specified when implementing RSS. Recently, to allow ties declared as needed, Frey (Environ Ecol Stat 19(3):309–326, 2012) proposed a modification of RSS, which is to simply break ties at random so that a standard ranked set sample is obtained, and meanwhile record the tie structure for use in estimation. Under this RSS variation, several mean estimators were developed and their performance was compared via simulation, with focus on continuous outcome variables. We extend the work of Frey (2012) to binary outcomes and investigate three nonparametric and three likelihood-based proportion estimators (with/without utilizing tie information), among which four are directly extended from existing estimators and the other two are novel. Under different tie-generating mechanisms, we compare the performance of these estimators and draw conclusions based on both simulation and a data example about breast cancer prevalence. Suggestions are made about the choice of the proportion estimator in general.
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页码:1349 / 1366
页数:17
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