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Estimating uncertainty in spatial microsimulation approaches to small area estimation: a new approach to solving an old problem

机译:估计小面积估计的空间微观模拟方法的不确定性:解决旧问题的新方法

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摘要

A wide range of user groups from policy makers to media commentators demand ever more spatially detailed information yet the desired data are often not available at fine spatial scales. Increasingly, small area estimation (SAE) techniques are called upon to fill in these informational gaps by downscaling survey outcome variables of interest based on the relationships seen with key covariate data. In the process SAE techniques both rely extensively on small area Census data to enable their estimation and offer potential future substitute data sources in the event of Census data becoming unavailable. Whilst statistical approaches to SAE routinely incorporate intervals of uncertainty around central point estimates in order to indicate their likely accuracy, the continued absence of such intervals from spatial microsimulation SAE approaches severely limits their utility and arguably represents their key methodological weakness. The present article presents an innovative approach to resolving this key methodological gap based on the estimation of variance of the between-area error term from a multilevel regression specification of the constraint selection for iterative proportional fitting (IPF). The performance of the estimated credible intervals are validated against known Census data at the target small area and show an extremely high level of performance. As well as offering an innovative solution to this long-standing methodological problem, it is hoped more broadly that the research will stimulate the spatial microsimulation community to adopt and build on these foundations so that we can collectively move to a position where intervals of uncertainty are delivered routinely around spatial microsimulation small area point estimates.
机译:从政策制定者到媒体评论员的广泛用户群需要越来越详细的空间信息,而所需的数据通常无法在精细的空间尺度上获得。越来越多地要求小面积估计(SAE)技术通过根据与关键协变量数据之间的关系缩小感兴趣的调查结果变量的比例来填补这些信息空白。在此过程中,SAE技术既广泛依赖于小范围的人口普查数据来进行估计,又在人口普查数据不可用时提供潜在的未来替代数据源。尽管SAE的统计方法通常会在中心点估计值周围合并不确定性区间,以表明其可能的准确性,但空间微观模拟SAE方法仍持续缺乏这种区间,这严重限制了其实用性,并且可以说是其关键的方法学缺陷。本文提出了一种创新方法,该方法基于对区域间误差项的方差的估计,该方法差是根据迭代比例拟合(IPF)约束选择的多级回归规范对区域间误差项的方差进行估计而得出的。估计的可信区间的性能已针对目标小区域的已知人口普查数据进行了验证,并显示出极高的性能水平。除了为解决这一长期存在的方法学问题提供创新的解决方案外,更广泛地希望该研究将刺激空间微观模拟社区采用并建立在这些基础之上,以便我们可以集体移至不确定性间隔为通常在空间微观模拟小面积点估计值附近提供。

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