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What Level of Statistical Model Should We Use in Small Area Estimation?

机译:小面积估算中应该使用什么级别的统计模型?

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If unit-level data are available, small area estimation (SAE) is usually based on models formulated at the unit level, but they are ultimately used to produce estimates at the area level and thus involve area-level inferences. This paper investigates the circumstances under which using an area-level model may be more effective. Linear mixed models (LMMs) fitted using different levels of data are applied in SAE to calculate synthetic estimators and empirical best linear unbiased predictors (EBLUPs). The performance of area-level models is compared with unit-level models when both individual and aggregate data are available. A key factor is whether there are substantial contextual effects. Ignoring these effects in unit-level working models can cause biased estimates of regression parameters. The contextual effects can be automatically accounted for in the area-level models. Using synthetic and EBLUP techniques, small area estimates based on different levels of LMMs are investigated in this paper by means of a simulation study.
机译:如果可获得单位级别的数据,则小面积估计(SAE)通常基于在单位级别制定的模型,但是最终将它们用于在区域级别产生估计,从而涉及区域级别的推论。本文研究了在何种情况下使用区域级模型可能更有效。使用不同数据水平拟合的线性混合模型(LMM)在SAE中应用,以计算综合估计量和经验最佳线性无偏预测量(EBLUP)。如果可以使用单个数据和汇总数据,则可以将区域级模型的性能与单元级模型的性能进行比较。一个关键因素是是否存在实质的上下文影响。忽略单元级工作模型中的这些影响可能导致回归参数的估计偏差。可以在区域级别的模型中自动考虑上下文效果。使用合成和EBLUP技术,本文通过模拟研究研究了基于不同水平LMM的小面积估计。

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