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Bayesian spatial+: A joint model perspective (2309.05496v2)

Published 11 Sep 2023 in stat.ME

Abstract: Spatial confounding is a common issue in spatial regression models, occurring when spatially indexed covariates that model the mean of the response are correlated with a spatial effect included in the model. This dependence, particularly at high spatial frequencies combined with smoothing, can introduce bias in the regression coefficient estimates. The spatial+ framework is a widely used two-stage frequentist approach to mitigate spatial confounding by explicitly modeling and removing the spatial structure in the confounding covariate, replacing it with residuals in the second-stage model for the response. However, frequentist spatial+ does not propagate uncertainty from the first-stage estimation to the second stage, and inference can be cumbersome in a frequentist setting. In contrast, a Bayesian joint modeling framework inherently propagates uncertainty between stages and allows for direct inference on the model parameters. Despite its advantages, the original spatial+ method does not ensure the residuals and spatial effects in the second-stage model are free of shared high spatial frequencies without additional assumptions. To address this, we propose a novel joint prior for the smoothness parameters of the spatial effects that mitigates this issue while preserving the predictive power of the model. We demonstrate the efficacy of our approach through simulation studies and real-world applications.

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