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Bayesian benchmarking of the Fay-Herriot model using random deletion

机译:使用随机删除的Fay-Herriot模型的贝叶斯基准

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Benchmarking lower level estimates to upper level estimates is an important activity at the United States Department of Agriculture's National Agricultural Statistical Service (NASS) (e.g., benchmarking county estimates to state estimates for corn acreage). Assuming that a county is a small area, we use the original Fay-Herriot model to obtain a general Bayesian method to benchmark county estimates to the state estimate (the target). Here the target is assumed known, and the county estimates are obtained subject to the constraint that these estimates must sum to the target. This is an external benchmarking; it is important for official statistics, not just NASS, and it occurs more generally in small area estimation. One can benchmark these estimates by "deleting" one of the counties (typically the last one) to incorporate the benchmarking constraint into the model. However, it is also true that the estimates may change depending on which county is deleted when the constraint is included in the model. Our current contribution is to give each small area a chance to be deleted, and we call this procedure the random deletion benchmarking method. We show empirically that there are differences in the estimates as to which county is deleted and that there are differences of these estimates from those obtained from random deletion as well. Although these differences may be considered small, it is most sensible to use random deletion because it does not give preferential treatment to any county and it can provide small improvement in precision over deleting the last one benchmarking as well.
机译:在美国农业部国家农业统计局(NASS)中,将较低的估算值与较高的估算值进行基准比较是一项重要的活动(例如,将县的估算值与州对玉米种植面积的估算值进行基准比较)。假设一个县是一个小区域,我们使用原始的Fay-Herriot模型来获得一般的贝叶斯方法,以将县估计值与州估计值(目标)进行基准比较。在此假定目标是已知的,并且在这些估计必须与目标求和的约束下获得县估计。这是一个外部基准测试;这对于官方统计数据(不仅是NASS)很重要,而且更普遍地发生在小面积估算中。可以通过“删除”其中一个县(通常是最后一个县)将基准约束纳入模型,从而对这些估计进行基准测试。但是,的确,当将约束包括在模型中时,估计值可能会根据删除哪个县而变化。我们目前的贡献是使每个小区域都有被删除的机会,我们将此过程称为随机删除基准测试方法。我们凭经验表明,关于哪个县被删除的估计存在差异,并且这些估计与从随机删除中获得的估计也存在差异。尽管可以将这些差异视为很小的差异,但使用随机删除是最明智的选择,因为它不会对任何县提供优惠待遇,并且与删除最后一个基准测试相比,其精度也会有所改善。

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