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Jackknife variance estimation under two-phase sampling

机译:两阶段采样下的刀切方差估计

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摘要

Two new Jackknife methods, as the counterparts of two existing Bootstrap methods of variance estimation under two-phase sampling, have been proposed. A simulation study has been conducted under both design-based and Conditional inference frameworks by generating two-phase samples from an infinite population for comparison of the proposed methods with five existing Jackknife and Bootstrap methods. The first method, the two-phase post-stratified Jackknife, reduces to an existing Jackknife variance estimation method considered under sampling from infinite population set up. The performance of the second method, the two-phase proportionate Jackknife, was better than two existing Jackknife methods while performing at par with another Jackknife method as well as with the two Bootstrap methods considered.
机译:已经提出了两种新的Jackknife方法,作为两阶段采样下两个现有的Bootstrap方差估计方法的对应方法。在基于设计和条件推理的框架下,通过从无限总体中生成两阶段样本进行了仿真研究,以将所提出的方法与现有的五种折刀法和自举法进行比较。第一种方法是两阶段后分层刀切法,它简化为现有的刀切方差估计方法,该方法是在从无限总体设置中采样下考虑的。第二种方法(两相成比例的折刀法)的性能优于现有的两种折刀法,同时与另一种折刀法以及所考虑的两种自举法相同。

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