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Small area estimation using survey weights under a nested error linear regression model with structural measurement error

机译:具有结构测量误差的嵌套误差线性回归模型下使用调查权重进行小面积估计

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摘要

Previously, the nested error linear regression models using survey weights have been studied in small area estimation to obtain efficient model-based and design-consistent estimators of small area means. In particular, the pseudo-empirical Bayes (PEB) using survey weights has received a lot of attention and is being used in statistical agencies. The covariates in these nested error linear regression models are not subject to measurement errors. However, there are many situations that the covariates are subject to measurement errors. In this paper, we develop a nested error linear regression model with an area-level covariate subject to structural measurement error. In particular, we propose a PEB estimator to estimate small area means. This estimator borrows strength across areas through the model and makes use of the survey weights to preserve the design consistency as the area sample size increases. We also employ a parametric bootstrap approach to estimate the mean squared prediction error (MSPE) of the PEB predictor. Finally, we report the results of a simulation study on the performance of our PEB predictor and associated bootstrap MSPE estimator.
机译:以前,已经在小面积估计中研究了使用调查权重的嵌套误差线性回归模型,以获得有效的基于模型和设计一致的小面积均值估计量。特别是,使用调查权重的伪经验贝叶斯(PEB)受到了广泛关注,并正在统计机构中使用。这些嵌套误差线性回归模型中的协变量不受测量误差的影响。但是,在许多情况下,协变量会受到测量误差的影响。在本文中,我们开发了一个嵌套误差线性回归模型,该模型具有受结构测量误差影响的区域级协变量。特别是,我们提出了PEB估计器来估计小面积均值。该估计器通过模型在各个区域之间借用强度,并随着区域样本量的增加,利用调查权重来保持设计的一致性。我们还采用参数自举方法来估计PEB预测变量的均方预测误差(MSPE)。最后,我们报告了对我们的PEB预测器和相关的自举MSPE估计器的性能进行仿真研究的结果。

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