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Constrained estimation using judgment post-stratification

机译:使用判断后分层的约束估计

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摘要

In ranked-set sampling (RSS) and judgment post-stratification (JPS), more efficient inference is obtained by creating a stratification based on ranking information. Using this stratification exactly as is done in stratified sampling or standard post-stratification leads to the standard nonparametric estimators for RSS and JPS. However, we show that strata obtained from ranking information satisfy additional constraints that need not be met by ordinary strata. Specifically, the in-stratum cumulative distribution functions (CDFs) can be no more extreme, in a certain sense, than the CDFs for order statistics from the overall distribution. The additional constraints can be used to obtain better small-sample estimates of the in-stratum CDFs using either RSS or JPS. In the JPS case, the constraints also lead to better small-sample estimates of the overall CDF and the population mean.
机译:在排序集抽样(RSS)和判断后分层(JPS)中,通过基于排名信息创建分层可以获得更有效的推断。完全按照分层抽样或标准后分层中的方法使用此分层,会导致RSS和JPS的标准非参数估计量。但是,我们表明,从排名信息获得的层次满足普通层次不需要满足的其他约束。具体而言,在某种意义上,层级累积分布函数(CDF)不能比CDF更为极端,因为CDF可以用于从整体分布中进行订单统计。可以使用RSS或JPS附加约束来获得更好的小样本样本估计CDF。在JPS案例中,约束条件还导致对总体CDF和总体平均值进行更好的小样本估计。

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