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Spatially-dependent Bayesian model selection for disease mapping

Journal Contribution - Journal Article

In disease mapping where predictor effects are to be modeled, it is often the case that sets of predictors are fixed, and the aim is to choose between fixed model sets. Model selection methods, both Bayesian model selection and Bayesian model averaging, are approaches within the Bayesian paradigm for achieving this aim. In the spatial context, model selection could have a spatial component in the sense that some models may be more appropriate for certain areas of a study region than others. In this work, we examine the use of spatially referenced Bayesian model averaging and Bayesian model selection via a large-scale simulation study accompanied by a small-scale case study. Our results suggest that BMS performs well when a strong regression signature is found.
Journal: Statistical methods in medical research
ISSN: 0962-2802
Issue: 1
Volume: 27
Pages: 250 - 268
Publication year:2018
Keywords:Bayesian model averaging, Bayesian model selection, spatial, R2WinBUGS, BRugs, MCMC
BOF-keylabel:yes
IOF-keylabel:yes
BOF-publication weight:6
CSS-citation score:1
Authors:International
Authors from:Higher Education
Accessibility:Open