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Robust inference under r-size-biased sampling without replacement from finite population

机译:在R尺寸偏置的采样下的鲁棒推断无需替代有限群体

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摘要

The case of size-biased sampling of known order from a finite population without replacement is considered. The behavior of such a sampling scheme is studied with respect to the sampling fraction. Based on a simulation study, it is concluded that such a sample cannot be treated either as a random sample from the parent distribution or as a random sample from the corresponding r-size weighted distribution and as the sampling fraction increases, the biasness in the sample decreases resulting in a transition from an r-size-biased sample to a random sample. A modified version of a likelihood-free method is adopted for making statistical inference for the unknown population parameters, as well as for the size of the population when it is unknown. A simulation study, which takes under consideration the sampling fraction, demonstrates that the proposed method presents better and more robust behavior compared to the approaches, which treat the r-size-biased sample either as a random sample from the parent distribution or as a random sample from the corresponding r-size weighted distribution. Finally, a numerical example which motivates this study illustrates our results.
机译:考虑了从有限群体没有替换的有限群体的已知订单的大小偏置的情况。对采样分数研究了这种采样方案的行为。基于仿真研究,得出结论,这种样品不能作为从母体分布的随机样品或从相应的R尺寸加权分布的随机样品治疗,并且随着采样分数增加,样品中的偏见降低从R尺寸偏向的样品到随机样品的转变。采用一种修改的版本,用于对未知的人口参数进行统计推断,以及当它未知时的群体大小。正在考虑采样部分的模拟研究表明,与方法呈现为从父分布或随机的随机样品将R型偏向的样品视为随机样品的方法,所提出的方法呈现更好,更鲁棒的行为来自相应的R尺寸加权分布的样品。最后,激励本研究的数字示例说明了我们的结果。

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