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Zero Expectile Processes and Bayesian Spatial Regression
Authors:Anandamayee Majumdar  Debashis Paul
Abstract:We introduce new classes of stationary spatial processes with asymmetric, sub-Gaussian marginal distributions using the idea of expectiles. We derive theoretical properties of the proposed processes. Moreover, we use the proposed spatial processes to formulate a spatial regression model for point-referenced data where the spatially correlated errors have skewed marginal distribution. We introduce a Bayesian computational procedure for model fitting and inference for this class of spatial regression models. We compare the performance of the proposed method with the traditional Gaussian process-based spatial regression through simulation studies and by applying it to a dataset on air pollution in California.
Keywords:Bayesian modeling  Double normal process  Expectile  Markov chain Monte Carlo  Posterior inference  Spatial statistics
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