Evaluating The Impact Of Misspecified Spatial Neighboring Structures In Bayesian CAR Models
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Scientific African
Abstract
Spatial neighboring graphs play a crucial role in accounting for global spatial dependency,
particularly in spatial models that utilize the Conditional Autoregressive (CAR) covariance
structure. The Bayesian modified Besag–York–Molliè (BYM2) model, which falls under the
category of CAR models, introduces a precision parameter to quantify the variability not
captured by the fixed risk components and a mixing parameter to decipher the proportion
of random effects attributed to the spatial component and the aspatial random noise. Despite
the advantages these extra features bring, misspecification of BYM2 model components is
common, and its effects are not well understood. Previous studies often avoid simulations due
to computational demands, relying instead on performance metrics for inferences and model
comparisons using empirical data.
This study uses comprehensive simulations to examine the impact of erroneously specified
spatial neighborhood structures on the BYM2 model. We considered three different neigh borhood structures: a first-order adjacency-based structure and two minimum distance-based
structures with threshold distances of 70 km and 140 km at various sparsity levels. For each
structure, we simulate data under that structure and then analyze it using the remaining two
structures as misspecified cases to evaluate their impact on model fit. Fixed PC prior settings
were applied to control for prior specification effects in examining bias and MSE. The study was
further validated through practical analyses of road crash incidents in Ghana and a lip cancer
cases data in Scotland, UK.
Our findings reveal that incorrect specification of the neighboring structure does not
significantly impact the fixed effects. However, it affects the estimates of the mixing pa rameter and precision term, thus impacting the spatial component. In cases of high spatial
dependency and misspecified neighborhood structures, the BYM2 model tends to underestimate
the mixing parameter. Under-specifying the neighborhood structure results in underestimated
hyper-parameter values while over-specifying it leads to an overfitted spatial smooth. The
empirical application results which were consistent with the simulation also emphasized the
critical importance of accurately specifying spatial structures in BYM2 models. Relying solely on
metrics like the Watanabe-Akaike Information Criterion (WAIC), Deviance Information Criterion.
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Research Article
Citation
Somua-Wiafe, E., Minkah, R., Doku-Amponsah, K., Asiedu, L., Acheampong, E., & Iddi, S. (2025). Evaluating the impact of misspecified spatial neighboring structures in Bayesian CAR models. Scientific African, 27, e02498.