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Statistical inference using stratified judgment post-stratified samples from finite populations

机译:使用来自有限群体的分层判断后分层样品的统计学推断

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This paper develops statistical inference for population mean and total using stratified judgment post-stratified (SJPS) samples. The SJPS design selects a judgment post-stratified sample from each stratum. Hence, in addition to stratum structure, it induces additional ranking structure within stratum samples. SJPS is constructed from a finite population using either a with or without replacement sampling design. Inference is constructed under both randomization theory and a super population model. In both approaches, the paper shows that the estimators of population mean and total are unbiased. The paper also constructs unbiased estimators for the variance (mean square prediction error) of the sample mean (predictor of population mean), and develops confidence and prediction intervals for the population mean. The empirical evidence shows that the proposed estimators perform better than their competitors in the literature.
机译:本文利用分层后(SJPS)样本的分层判断,为人口平均值和总量产生统计推断。 SJPS设计选择来自每个层的分层后样品的判断。 因此,除了层面结构之外,它还在层次样本中引起额外的排名结构。 SJP由使用A或无需更换采样设计的有限群体构建。 推断是在随机化理论和超级人口模型的构建。 在这两种方法中,本文表明,人口估算均值和总数是无偏见的。 本文还构造了用于样本平均值的方差(平均方预测误差)的非偏见估计(人口平均值的预测器),并对人口的置信度和预测间隔产生置信度和预测间隔。 经验证据表明,拟议的估计人员比他们的竞争对手更好地表现出优于他们的竞争对手。

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