Journal article

On semiparametric inference of geostatistical models via local Karhunen-Loève expansion

T Chu, H Wang, J Zhu

Journal of the Royal Statistical Society Series B Statistical Methodology | OXFORD UNIV PRESS | Published : 2014

Abstract

We develop a semiparametric approach to geostatistical modelling and inference. In particular, we consider a geostatistical model with additive components, where the form of the covariance function of the spatial random error is not prespecified and thus is flexible. A novel, local Karhunen-Loève expansion is developed and a likelihood-based method is devised for estimating the model parameters and statistical inference. A simulation study demonstrates sound finite sample properties and a real data example is given for illustration. Finally, the theoretical properties of the estimates are explored and, in particular, consistency results are established. © 2013 Royal Statistical Society.

University of Melbourne Researchers

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Funding Acknowledgements

The authors thank the Joint Editor, the Associate Editor and the referees for their helpful comments. Funding has been provided for this research from US Department of Agriculture Co-operative State Research, Education and Extension Service Hatch and McIntire-Stennis projects. The research of Tingjin Chu was supported by the National Natural Science Foundation of China (grant 11301536). The research of Haonan Wang was partially supported by National Science Foundation grants DMS-0854903 and DMS-1106975.