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The (in)stability of Bayesian model selection criteria in disease mapping

Tijdschriftbijdrage - Tijdschriftartikel

Several model comparison techniques exist to select the best fitting model from a set of candidate models. This study explores the performance of model comparison tools that are commonly used in Bayesian spatial disease mapping and that are available among several Bayesian software packages: the deviance information criterion (DIC), the Watanabe–Akaike information criterion (WAIC) and the log marginal predictive likelihood (LMPL). We compare R packages CARBayes and NIMBLE, and R interfaces to OpenBUGS (R2OpenBUGS) and Stan (RStan), by fitting Poisson models to disease incidence outcomes with intrinsic conditional autoregressive, convolution conditional autoregressive and log-normal error terms. From three data analyses that differ in the number of areal units and background incidence/prevalence of the outcome of interest, we learn that the estimates of model comparison statistics coming from different software packages can lead to disagreements regarding model preference. Furthermore, we show that the distributional convergence of parameter estimates does not necessarily imply numerical convergence of the model comparison tool. We warn users to be careful when doing model comparison when using different software packages, and to make use of one specific method for the calculation of the model selection criteria.
Tijdschrift: Spatial Statistics
ISSN: 2211-6753
Volume: 43
Jaar van publicatie:2021
Trefwoorden:Disease mapping, Software packages, DIC, WAIC, LMPL
BOF-keylabel:ja
IOF-keylabel:ja
BOF-publication weight:1
Authors from:Higher Education
Toegankelijkheid:Open