Abstract:
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Nonstationary spatial modelling is exciting and potentially rewarding, but suffers from several problems : its computational cost, the complexity and lack of interpretability of multi-layered hierarchical models, and the difficulty of model selection. We tackle those problems by introducing a nonstationary Nearest Neighbor Gaussian Process (NNGP) model. NNGPs are a good starting point to address the problem of computational the cost because of their accuracy and affordability. We study the behavior of NNGPs that use a nonstationary covariance function, deriving some algebraic properties and exploring the impact of ordering on the effective covariance induced by NNGPs. To ease results analysis and model selection, we introduce a readable hierarchical model architecture. In particular, we make parameters interpretation and model selection easier by integrating stationary, circular and elliptic correlation in a consistent framework. We propose a MCMC algorithm based on Metropolis Adjusted Langevin Algorithm. We carry out experiments on synthetic data sets to find empirical practical rules.
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