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The Impact of Spatial Scales and Spatial Smoothing on the Outcome of Bayesian Spatial Model

机译:空间尺度和空间平滑度对贝叶斯空间模型结果的影响

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摘要

Discretization of a geographical region is quite common in spatial analysis. There have been few studies into the impact of different geographical scales on the outcome of spatial models for different spatial patterns. This study aims to investigate the impact of spatial scales and spatial smoothing on the outcomes of modelling spatial point-based data. Given a spatial point-based dataset (such as occurrence of a disease), we study the geographical variation of residual disease risk using regular grid cells. The individual disease risk is modelled using a logistic model with the inclusion of spatially unstructured and/or spatially structured random effects. Three spatial smoothness priors for the spatially structured component are employed in modelling, namely an intrinsic Gaussian Markov random field, a second-order random walk on a lattice, and a Gaussian field with Matérn correlation function. We investigate how changes in grid cell size affect model outcomes under different spatial structures and different smoothness priors for the spatial component. A realistic example (the Humberside data) is analyzed and a simulation study is described. Bayesian computation is carried out using an integrated nested Laplace approximation. The results suggest that the performance and predictive capacity of the spatial models improve as the grid cell size decreases for certain spatial structures. It also appears that different spatial smoothness priors should be applied for different patterns of point data.
机译:在空间分析中,地理区域的离散化非常普遍。很少有研究针对不同空间模式的不同地理尺度对空间模型结果的影响。这项研究旨在调查空间尺度和空间平滑化对基于空间点数据的建模结果的影响。给定基于空间点的数据集(例如疾病的发生),我们使用规则的网格单元研究残留疾病风险的地理变化。使用逻辑模型对个体疾病风险进行建模,其中包括空间非结构化和/或空间结构化的随机效应。在建模中采用了空间结构化分量的三个空间平滑先验,即固有高斯马尔可夫随机场,晶格上的二阶随机游动和具有Matérn相关函数的高斯场。我们调查在不同的空间结构和空间分量的不同平滑先验条件下,网格像元大小的变化如何影响模型结果。分析了一个现实的例子(Humberside数据)并描述了仿真研究。贝叶斯计算是使用集成的嵌套拉普拉斯近似进行的。结果表明,对于某些空间结构,当网格像元大小减小时,空间模型的性能和预测能力会提高。还似乎应该对点数据的不同模式应用不同的空间平滑度先验。

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