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A spatial partial differential equation approach to addressing unit misalignments in Bayesian poisson space-time models

机译:一种空间局部微分方程方法,解决贝叶斯泊松时空模型的单位错位

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摘要

Spatial analyses using data from geographic areas that change shape and location over time, like US ZIP codes, produce biased results to the extent that unit misalignments are related to covariate effects. To address this issue, one method has incorporated a fixed effect measure of population shifts and a spatial structure as a block-diagonal neighborhood adjacency matrix within a Besag-York-Mollie(BYM) model. However, this approach assumes that spatial relationships among units change with time and precludes the assessment of temporal dynamic effects. Here, we assume that a continuous Gaussian random field underlies misaligned data and apply a stochastic partial differential equation (SPDE) approach to modeling area outcomes. We compare SPDE and BYM methods and show that both provide similar estimates of covariate effects. Importantly, we demonstrate that the SPDE approach can additionally identify autoregressive processes underlying the development of problematic health outcomes using data observed across Pennsylvania over 11 years. (C) 2020 Elsevier Ltd. All rights reserved.
机译:空间分析使用来自地理区域的数据改变形状和位置随着时间的推移,如美国邮政编码,在单位未对准与协变量效应相关的程度上产生偏见的结果。为了解决这个问题,一种方法在于BESAG-York-Mollie(BYM)模型中,一种方法纳入了群体移位和空间结构作为块对角线邻域邻接矩阵。然而,这种方法假设单位之间的空间关系随时间的变化,并排除对时间动态效应的评估。在这里,我们假设连续高斯随机字段下潜的未对准数据并应用随机部分微分方程(SPDE)方法来建模区域结果。我们比较SPDE和BYM方法,并表明两者都提供了类似的协变量估计。重要的是,我们证明了SPDE方法可以另外识别在11年内使用宾夕法尼亚州观察到的数据观察到有问题健康结果的发展的自回归过程。 (c)2020 elestvier有限公司保留所有权利。

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