Neighborhood Dependence in Bayesian Spatial Models
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The conditional autoregressive model and the intrinsic autoregressive model are widely used as prior distribution for random spatial effects in Bayesian models. Several authors have pointed out impractical or counterintuitive consequences on the prior covariance matrix or the posterior covariance matrix of the spatial random effects. This article clarifies many of these puzzling results. We show that the neighborhood graph structure, synthesized in eigenvalues and eigenvectors structure of a matrix associated with the adjacency matrix, determines most of the apparently anomalous behavior. We illustrate our conclusions with regular and irregular lattices including lines, grids, and lattices based on real maps.
Tessema Z, Tesema G, Wah W, Ahern S, Papa N, Millar J Healthcare (Basel). 2024; 12(11).
PMID: 38891168 PMC: 11171974. DOI: 10.3390/healthcare12111093.
Revisiting Gaussian Markov random fields and Bayesian disease mapping.
MacNab Y Stat Methods Med Res. 2022; 32(1):207-225.
PMID: 36317373 PMC: 9814028. DOI: 10.1177/09622802221129040.
A unified Gaussian copula methodology for spatial regression analysis.
Hughes J Sci Rep. 2022; 12(1):15915.
PMID: 36151389 PMC: 9508247. DOI: 10.1038/s41598-022-20171-1.
Spatial disease mapping using directed acyclic graph auto-regressive (DAGAR) models.
Datta A, Banerjee S, Hodges J, Gao L Bayesian Anal. 2021; 14(4):1221-1244.
PMID: 33859772 PMC: 8046356. DOI: 10.1214/19-ba1177.
Law J AIMS Public Health. 2018; 3(1):65-82.
PMID: 29546147 PMC: 5690264. DOI: 10.3934/publichealth.2016.1.65.