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arxiv: 1706.04651 · v2 · pith:I7LGVFK4new · submitted 2017-06-14 · 📊 stat.ME

Spatial Regression and the Bayesian Filter

classification 📊 stat.ME
keywords spatialmodelsregressionbayesiandiscussfilteringnon-spatialtraditional
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Regression for spatially dependent outcomes poses many challenges, for inference and for computation. Non-spatial models and traditional spatial mixed-effects models each have their advantages and disadvantages, making it difficult for practitioners to determine how to carry out a spatial regression analysis. We discuss the data-generating mechanisms implicitly assumed by various popular spatial regression models, and discuss the implications of these assumptions. We propose Bayesian spatial filtering as an approximate middle way between non-spatial models and traditional spatial mixed models. We show by simulation that our Bayesian spatial filtering model has several desirable properties and hence may be a useful addition to a spatial statistician's toolkit.

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