Optimal geostatistical model selection

成果类型:
Article
署名作者:
Huang, Hsin-Cheng; Chen, Chun-Shu
署名单位:
National Central University
刊物名称:
JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION
ISSN/ISSBN:
0162-1459
DOI:
10.1198/016214507000000491
发表日期:
2007
页码:
1009-1024
关键词:
splines covariance regression smooth
摘要:
In many fields of science, predicting variables of interest over a study region based on noisy data observed at some locations is an important problem. Two popular methods for the problem are kriging and smoothing splines. The former assumes that the underlying process is stochastic, whereas the latter assumes it is purely deterministic. Kriging performs better than smoothing splines in some situations, but is outperformed by smoothing splines in others. However, little is known regarding selecting between kriging and smoothing splines. In addition, how to perform variable selection in a geostatistical model has not been well studied. In this article we propose a general methodology for selecting among arbitrary spatial prediction methods based on (approximately) unbiased estimation of mean squared prediction errors using a data perturbation technique. The proposed method accounts for estimation uncertainty in both kriging and smoothing spline predictors, and is shown to be optimal in terms of two mean squared prediction error criteria. A simulation experiment is performed to demonstrate the effectiveness of the proposed methodology. The proposed method is also applied to a water acidity data set by selecting important variables responsible for water acidity based on a spatial regression model. Moreover, a new method is proposed for estimating the noise variance that is robust and performs better than some well-known methods.