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首页> 外文期刊>Test: An Official Journal of the Spanish Society of Statistics and Operations Research >Statistical inference using rank-based post-stratified samples in a finite population
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Statistical inference using rank-based post-stratified samples in a finite population

机译:在有限群体中使用基于秩的基于级分层样本的统计学推断

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In this paper, we consider statistical inference based on post-stratified samples from a finite population. We first select a simple random sample (SRS) of size n and identify their population ranks. Conditioning on these population ranks, we construct probability mass functions of the sample ranks of n units in a larger sample of size M > n. The n units in SRS are then post-stratified into d classes using conditional sample ranks. The sample ranks are constructed with two different conditional distributions leading to two different sampling designs. The first design uses a conditional distribution given n ordered population ranks. The second design uses a conditional distribution given a single (marginal) unordered population rank. The paper introduces unbiased estimators for the population mean, total, and their variances based on the post-stratified samples from these two designs. The conditional distributions of the sample ranks are used to construct Rao-Blackwell estimator for the population mean and total. We showthat Rao-Blackwell estimators outperform the same estimators constructed from a systematic sample.
机译:在本文中,我们认为基于来自有限群体的分层样本的统计推断。我们首先选择一个尺寸的简单随机样本(SRS),并识别他们的人口排名。对这些人口的调理等级,我们在较大的尺寸样本中构建样品等级的概率质量函数。然后使用条件样本等级将SRS中的N个单位分层分层成D类。采样等级构造有两个不同的条件分布,导致两种不同的采样设计。第一个设计使用给定的群体排名的条件分布。第二种设计使用单一(边缘)无序的人口等级的条件分布。本文介绍了基于这两种设计的分层后样本的人口平均值,总数和差异的无偏估计。样品等级的条件分布用于构建人口平均值和总数的Rao-Blackwell估计。我们展示Rao-Blackwell估计器优于由系统样本构成的相同估计器。

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