Anisotropic Matern correlation and spatial prediction using REML

The Matérn correlation function provides great flexibility for modeling spatially correlated random processes in two dimensions, in particular via a smoothness parameter, whose estimation allows data to determine the degree of smoothness of a spatial process. The extension to include anisotropy prov...

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Veröffentlicht in:Journal of agricultural, biological, and environmental statistics biological, and environmental statistics, 2007-06, Vol.12 (2), p.147-160
Hauptverfasser: Haskard, K.A, Cullis, B.R, Verbyla, A.P
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Sprache:eng
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Zusammenfassung:The Matérn correlation function provides great flexibility for modeling spatially correlated random processes in two dimensions, in particular via a smoothness parameter, whose estimation allows data to determine the degree of smoothness of a spatial process. The extension to include anisotropy provides a very general and flexible class of spatial covariance functions that can be used in a model-based approach to geostatistics, in which parameter estimation is achieved via REML and prediction is within the E-BLUP framework. In this article we develop a general class of linear mixed models using an anisotropic Matérn class with an extended metric. The approach is illustrated by application to soil salinity data in a rice-growing field in Australia, and to fine-scale soil pH data. It is found that anisotropy is an important aspect of both datasets, emphasizing the value of a straightforward and accessible approach to modeling anisotropy.
ISSN:1085-7117
1537-2693
DOI:10.1198/108571107X196004