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Statistica Sinica 25 (2015), 99-114

FULL-SCALE APPROXIMATIONS OF SPATIO-TEMPORAL
COVARIANCE MODELS FOR LARGE DATASETS
Bohai Zhang, Huiyan Sang and Jianhua Z. Huang
Texas A&M University

Abstract: Various continuously-indexed spatio-temporal process models have been constructed to characterize spatio-temporal dependence structures, but the computational complexity for model fitting and predictions grows in a cubic order with the size of dataset and application of such models is not feasible for large datasets. This article extends the full-scale approximation (FSA) approach by Sang and Huang (2012) to the spatio-temporal context to reduce computational complexity. A reversible jump Markov chain Monte Carlo (RJMCMC) algorithm is proposed to select knots automatically from a discrete set of spatio-temporal points. Our approach is applicable to nonseparable and nonstationary spatio-temporal covariance models. We illustrate the effectiveness of our method through simulation experiments and application to an ozone measurement dataset.

Key words and phrases: Covariance approximation, Gaussian process, knot selection, reversible jump Markov chain Monte Carlo, sparse matrix.

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