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SMALL AREA ESTIMATION VIA MULTIVARIATE FAY-HERRIOT MODELS WITH LATENT SPATIAL DEPENDENCE

机译:具有空间依赖性的多元FAR-HERIROT模型的小面积估计

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摘要

The Fay-Herriot model is a standard model for direct survey estimators in which the true quantity of interest, the superpopulation mean, is latent and its estimation is improved through the use of auxiliary covariates. In the context of small area estimation, these estimates can be further improved by borrowing strength across spatial regions or by considering multiple outcomes simultaneously. We provide here two formulations to perform small area estimation with Fay-Herriot models that include both multivariate outcomes and latent spatial dependence. We consider two model formulations. In one of these formulations the outcome-by-space dependence structure is separable. The other accounts for the cross dependence through the use of a generalized multivariate conditional autoregressive (GMCAR) structure. The GMCAR model is shown, in a state-level example, to produce smaller mean square prediction errors, relative to equivalent census variables, than the separable model and the state-of-the-art multivariate model with unstructured dependence between outcomes and no spatial dependence. In addition, both the GMCAR and the separable models give smaller mean squared prediction error than the state-of-the-art model when conducting small area estimation on county level data from the American Community Survey.
机译:Fay-Herriot模型是直接调查估计量的标准模型,在该模型中,真实的真实数量(超人口平均数)是潜在的,并且其估计可以通过使用辅助协变量来改进。在小面积估计的背景下,可以通过在空间区域中借用强度或同时考虑多个结果来进一步改善这些估计。在此,我们提供两种公式来使用Fay-Herriot模型执行小面积估计,包括多元结果和潜在的空间依赖性。我们考虑两种模型公式。在这些公式之一中,按结果的依存结构是可分离的。其他通过使用广义多元条件自回归(GMCAR)结构来解释交叉依赖。在州级示例中,GMCAR模型显示出相对于同等的人口普查变量,与可分离模型和最新的多元模型相比,产生的均方根预测误差更小,而结果与结果之间没有非结构性依存关系,而且没有空间依赖。此外,在对来自美国社区调查的县级数据进行小面积估算时,GMCAR模型和可分离模型均提供比最新模型更小的均方预测误差。

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