Publication details
- Journal: Computational Statistics & Data Analysis, vol. 02.01.1904 05:03:00, p. 295–321–27, Friday 1. January 1999
- Publisher: Elsevier
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International Standard Numbers:
- Printed: 0167-9473
- Electronic: 1872-7352
- Links:
A flexible framework for prediction of a random process with unknown trend and correlated residuals is presented. Our approach is motivated by a local parametric model, and we derive a locally optimal predictor of the process at unobserved locations. Comparisons with local regression estimation and Kriging are made, and we show that the proposed class of methods provides a bridge between these two approaches. A procedure for parameter estimation and model selection is suggested. The method is illustrated through a simulation study and through an application to European sulphate data.