Article ID: | iaor20172286 |
Volume: | 59 |
Issue: | 2 |
Start Page Number: | 215 |
End Page Number: | 233 |
Publication Date: | Jun 2017 |
Journal: | Australian & New Zealand Journal of Statistics |
Authors: | Wu Yuehua, Wang Hongxia, Chan Elton |
Keywords: | geography & environment |
Spatially correlated data appear in many environmental studies, and consequently there is an increasing demand for estimation methods that take account of spatial correlation and thereby improve the accuracy of estimation. In this paper we propose an iterative nonparametric procedure for modelling spatial data with general correlation structures. The asymptotic normality of the proposed estimators is established under mild conditions. We demonstrate, using both simulation and case studies, that the proposed estimators are more efficient than the traditional locally linear methods which fail to account for spatial correlation.