Bayesian Modeling and Inference for Geometrically Anisotropic Spatial Data

被引:0
|
作者
Mark D. Ecker
Alan E. Gelfand
机构
[1] University of Northern Iowa,Department of Mathematics
[2] University of Connecticut,Department of Statistics
来源
Mathematical Geology | 1999年 / 31卷
关键词
contour plot; correlation functions; importance sampling; second-order stationary; semivariogram; Wishart distribution;
D O I
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中图分类号
学科分类号
摘要
A geometrically anisotropic spatial process can be viewed as being a linear transformation of an isotropic spatial process. Customary semivariogram estimation techniques often involve ad hoc selection of the linear transformation to reduce the region to isotropy and then fitting a valid parametric semivariogram to the data under the transformed coordinates. We propose a Bayesian methodology which simultaneously estimates the linear transformation and the other semivariogram parameters. In addition, the Bayesian paradigm allows full inference for any characteristic of the geometrically anisotropic model rather than merely providing a point estimate. Our work is motivated by a dataset of scallop catches in the Atlantic Ocean in 1990 and also in 1993. The 1990 data provide useful prior information about the nature of the anisotropy of the process. Exploratory data analysis (EDA) techniques such as directional empirical semivariograms and the rose diagram are widely used by practitioners. We recommend a suitable contour plot to detect departures from isotropy. We then present a fully Bayesian analysis of the 1993 scallop data, demonstrating the range of inferential possibilities.
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页码:67 / 83
页数:16
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