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Open AccessJournal ArticleDOI

Spatial Modelling Using a New Class of Nonstationary Covariance Functions.

Christopher J. Paciorek, +1 more
- 01 Aug 2006 - 
- Vol. 17, Iss: 5, pp 483-506
TLDR
A new class of nonstationary covariance functions for spatial modelling, which includes a non stationary version of the Matérn stationary covariance, in which the differentiability of the spatial surface is controlled by a parameter, freeing one from fixing the differentiable in advance.
Abstract
We introduce a new class of nonstationary covariance functions for spatial modelling. Nonstationary covariance functions allow the model to adapt to spatial surfaces whose variability changes with location. The class includes a nonstationary version of the Matern stationary covariance, in which the differentiability of the spatial surface is controlled by a parameter, freeing one from fixing the differentiability in advance. The class allows one to knit together local covariance parameters into a valid global nonstationary covariance, regardless of how the local covariance structure is estimated. We employ this new nonstationary covariance in a fully Bayesian model in which the unknown spatial process has a Gaussian process (GP) prior distribution with a nonstationary covariance function from the class. We model the nonstationary structure in a computationally efficient way that creates nearly stationary local behavior and for which stationarity is a special case. We also suggest non-Bayesian approaches to nonstationary kriging.To assess the method, we use real climate data to compare the Bayesian nonstationary GP model with a Bayesian stationary GP model, various standard spatial smoothing approaches, and nonstationary models that can adapt to function heterogeneity. The GP models outperform the competitors, but while the nonstationary GP gives qualitatively more sensible results, it shows little advantage over the stationary GP on held-out data, illustrating the difficulty in fitting complicated spatial data.

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An explicit link between Gaussian fields and Gaussian Markov random fields: the stochastic partial differential equation approach

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TL;DR: A family of local sequential design schemes that dynamically define the support of a Gaussian process predictor based on a local subset of the data are derived, enabling a global predictor able to take advantage of modern multicore architectures.
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Strictly and non-strictly positive definite functions on spheres

TL;DR: In this paper, characterizations of positive definite functions on spheres in terms of Gegenbauer expansions are reviewed and applied to dimension walks, where monotonicity properties of the Gegenstein coefficients guarantee positive definiteness in higher dimensions.
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A full scale approximation of covariance functions for large spatial data sets

TL;DR: In this paper, a new approximation scheme is developed to provide a high quality approximation to the covariance function at both the large and small spatial scales, which is the summation of two parts: a reduced rank covariance and a compactly supported covariance obtained by tapering the covariances of the residual of the reduced rank approximation.
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