Empirical likelihood for balanced ranked-set sampled data

被引:0
作者
TianQing Liu
Nan Lin
BaoXue Zhang
机构
[1] Northeast Normal University,Key Laboratory for Applied Statistics of MOE and School of Mathematics and Statistics
[2] Washington University in Saint Louis,Department of Mathematics
来源
Science in China Series A: Mathematics | 2009年 / 52卷
关键词
empirical likelihood; ranked-set sampling; testing hypotheses; confidence interval; estimating equation; 62G10;
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学科分类号
摘要
Ranked-set sampling (RSS) often provides more efficient inference than simple random sampling (SRS). In this article, we propose a systematic nonparametric technique, RSS-EL, for hypothesis testing and interval estimation with balanced RSS data using empirical likelihood (EL). We detail the approach for interval estimation and hypothesis testing in one-sample and two-sample problems and general estimating equations. In all three cases, RSS is shown to provide more efficient inference than SRS of the same size. Moreover, the RSS-EL method does not require any easily violated assumptions needed by existing rank-based nonparametric methods for RSS data, such as perfect ranking, identical ranking scheme in two groups, and location shift between two population distributions. The merit of the RSS-EL method is also demonstrated through simulation studies.
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页码:1351 / 1364
页数:13
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