Journal article
Semiparametric modeling with nonseparable and nonstationary spatio-temporal covariance functions and its inference
T Chu, J Zhu, H Wang
Statistica Sinica | STATISTICA SINICA | Published : 2019
Abstract
In this study, we develop a new semiparametric approach to model geostatistical data measured repeatedly over time. In addition, we draw inferences about the parameters and components of the underlying spatio-temporal process. Dependence in time and across space is modeled semiparametrically, giving rise to a class of nonseparable and nonstationary spatio-temporal covariance functions. A two-step procedure is devised to estimate the model parameters based on the likelihood of detrended data, and the computational algorithm is efficient owing to the dimension reduction. Extensions to spatio-temporal processes with general mean trends are also considered. Furthermore, the asymptotic properties..
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Awarded by National Science Foundation
Funding Acknowledgements
We would like to thank a co-editor, an associate editor, and two referees for their helpful comments and suggestions. The research was partially supported by the National Natural Science Foundation of China (grant 11301536) for Tingjin Chu, the USGS CESU Award G16AC00344 for Jun Zhu, and the NSF grants DMS-1521746 and DMS-1737795 for Haonan Wang.