高阶精度小面积估计器的不确定度测量

CIRJE F-Series Pub Date : 2012-02-27 DOI:10.14490/JJSS.41.93
T. Kubokawa
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引用次数: 17

摘要

线性混合模型中的经验最佳线性无偏预测器(EBLUP)或经验贝叶斯估计器(EB)可以利用相关区域的信息提高估计精度,被认为对小面积估计有用。EBLUP的两个不确定性度量是均方误差(MSE)的估计和置信区间的估计,文献中对二阶精度下的均方误差和置信区间的估计进行了研究。本文在统一的框架下给出了这两种测度的一般分析结果,即推导了方差分量的一般一致估计量满足MSE估计的三阶精度和一般线性混合正态模型的置信区间的条件。这些条件不仅被极大似然(ML)和受限极大似然(REML)所满足,而且在特定模型中也被其他估计量所满足,包括Prasad-Rao和Fay-Herriot估计量。
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On Measuring Uncertainty of Small Area Estimators with Higher Order Accuracy
The empirical best linear unbiased predictor (EBLUP) or the empirical Bayes estimator (EB) in the linear mixed model is recognized useful for the small area estimation, because it can increase the estimation precision by using the information from the related areas. Two of the measures of uncertainty of EBLUP is the estimation of the mean squared error (MSE) and the confidence interval, which have been studied under the second-order accuracy in the literature. This paper provides the general analytical results for these two measures in the unified framework, namely, we derive the conditions on the general consistent estimators of the variance components to satisfy the third-order accuracy in the MSE estimation and the confidence interval in the general linear mixed normal models. Those conditions are shown to be satisfied by not only the maximum likelihood (ML) and restricted maximum likelihood (REML), but also the other estimators including the Prasad-Rao and Fay-Herriot estimators in specific models.
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