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Model based inference using ranked set samples

机译:使用排名集样本的基于模型的推理

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This paper develops statistical inference based on super population model in a finite population setting using ranked set samples (RSS). The samples are constructed without replacement. It is shown that the sample mean of RSS is model unbiased and has smaller mean square prediction error (MSPE) than the MSPE of a simple random sample mean. Using an unbiased estimator of MSPE, the paper also constructs a prediction confidence interval for the population mean. A small scale simulation study shows that estimator is as good as a simple random sample (SRS) estimator for poor ranking information. On the other hand it has higher efficiency than SRS estimator when the quality of ranking information is good, and the cost ratio of obtaining a single unit in RSS and SRS is not very high. Simulation study also indicates that coverage probabilities of prediction intervals are very close to the nominal coverage probabilities. Proposed inferential procedure is applied to a real data set.
机译:本文使用排序集样本(RSS)在有限总体设置中基于超级总体模型开发统计推断。样品未经更换即可构建。结果表明,RSS的样本均值是无偏模型的,并且比简单随机样本均值的MSPE的均方根预测误差(MSPE)小。使用MSPE的无偏估计量,本文还构造了总体均值的预测置信区间。一项小规模的模拟研究表明,对于劣等排名信息,估计器与简单随机样本(SRS)估计器一样好。另一方面,当排名信息的质量良好时,它比SRS估计器具有更高的效率,并且在RSS和SRS中获得单个单元的成本比不是很高。仿真研究还表明,预测区间的覆盖率非常接近标称覆盖率。拟议的推理程序应用于真实数据集。

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