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Small area estimation under a Fay-Herriot model with preliminary testing for the presence of random area effects

机译:在Fay-Herriot模型下进行小面积估计,并初步测试是否存在随机区域效应

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摘要

A popular area level model used for the estimation of small area means is the Fay-Herriot model. This model involves unobservable random effects for the areas apart from the (fixed) linear regression based on area level covariates. Empirical best linear unbiased predictors of small area means are obtained by estimating the area random effects, and they can be expressed as a weighted average of area-specific direct estimators and regression-synthetic estimators. In some cases the observed data do not support the inclusion of the area random effects in the model. Excluding these area effects leads to the regression-synthetic estimator, that is, a zero weight is attached to the direct estimator. A preliminary test estimator of a small area mean obtained after testing for the presence of area random effects is studied. On the other hand, empirical best linear unbiased predictors of small area means that always give non-zero weights to the direct estimators in all areas together with alternative estimators based on the preliminary test are also studied. The preliminary testing procedure is also used to define new mean squared error estimators of the point estimators of small area means. Results of a limited simulation study show that, for small number of areas, the preliminary testing procedure leads to mean squared error estimators with considerably smaller average absolute relative bias than the usual mean squared error estimators, especially when the variance of the area effects is small relative to the sampling variances.
机译:用于估计小面积均值的流行区域级别模型是Fay-Herriot模型。除了基于面积水平协变量的(固定)线性回归以外,该模型还涉及其他区域的不可观察的随机效应。小面积均值的经验最佳线性无偏预测变量是通过估计区域随机效应而获得的,它们可以表示为区域特定直接估计量和回归综合估计量的加权平均值。在某些情况下,观察到的数据不支持在模型中包括区域随机效应。排除这些面积效应会导致回归综合估算器,即直接估算器的权重为零。研究了在测试区域随机效应的存在之后获得的小面积均值的初步测试估计量。另一方面,小区域的经验最佳线性无偏预测器意味着,始终对所有区域中的直接估计器以及基于初步检验的替代估计器始终赋予非零权重。初步测试程序还用于定义小面积均值点估计器的新均方误差估计器。有限模拟研究的结果表明,对于少数区域,初步测试程序会导致均方误差估计量的平均绝对相对偏差比通常的均方误差估计量小得多,尤其是在面积影响的方差较小时相对于抽样方差。

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