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A mixed model-assisted regression estimator that uses variables employed at the design stage

机译:使用设计阶段使用的变量的混合模型辅助回归估计器

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The Generalized regression estimator (GREG) of a finite population mean or total has been shown to be asymptotically optimal when the working linear regression model upon which it is based includes variables related to the sampling design. In this paper a regression estimator assisted by a linear mixed superpopulation model is proposed. It accounts for the extra information coming from the design in the random component of the model and saves degrees of freedom in finite sample estimation. This procedure combines the larger asymptotic efficiency of the optimal estimator and the greater finite sample stability of the GREG. Design based properties of the proposed estimator are discussed and a small simulation study is conducted to explore its finite sample performance.
机译:当工作线性回归模型所基于的工作线性回归模型包含与抽样设计相关的变量时,有限总体平均值或总数的广义回归估计量(GREG)已被证明是渐近最优的。本文提出了一种基于线性混合超种群模型的回归估计量。它考虑了模型随机成分中来自设计的额外信息,并节省了有限样本估计中的自由度。此过程结合了最佳估计器的较大渐近效率和GREG的较大有限样本稳定性。讨论了拟议估计量的基于设计的属性,并进行了小型仿真研究以探索其有限样本性能。

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