2022
DOI: 10.48550/arxiv.2203.05197
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Spatially-Varying Bayesian Predictive Synthesis for Flexible and Interpretable Spatial Prediction

Abstract: Spatial data are characterized by their spatial dependence, which is often complex, nonlinear, and difficult to capture with a single model. Significant levels of model uncertaintyarising from these characteristics-cannot be resolved by model selection or simple ensemble methods, as performances are not homogeneous. We address this issue by proposing a novel methodology that captures spatially-varying model uncertainty, which we call spatial Bayesian predictive synthesis. Our proposal is defined by specifying … Show more

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