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Spatial sampling design and covariance-robust minimax prediction based on convex design ideas

机译:基于凸设计思想的空间采样设计与协方差鲁棒极大极小预测

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This paper presents new ideas on sampling design and minimax prediction in a geostatistical model setting. Both presented methodologies are based on regression design ideas. For this reason the appendix of this paper gives an introduction to optimum Bayesian experimental design theory for linear regression models with uncorrelated errors. The presented methodologies and algorithms are then applied to the spatial setting of correlated random fields. To be specific, in Sect. 1 we will approximate an isotropic random field by means of a regression model with a large number of regression functions with random amplitudes, similarly to Fedorov and Flanagan (J Combat Inf Syst Sci: 23, 1997). These authors make use of the Karhunen Loeve approximation of the isotropic random field. We use the so-called polar spectral approximation instead; i.e. we approximate the isotropic random field by means of a regression model with sine-cosine-Bessel surface harmonics with random amplitudes and then, in accordance with Fedorov and Flanagan (J Combat Inf Syst Sci: 23, 1997), apply standard Bayesian experimental design algorithms to the resulting Bayesian regression model. Section 2 deals with minimax prediction when the covariance function is known to vary in some set of a priori plausible covariance functions. Using a minimax theorem due to Sion (Pac J Math 8:171-176, 1958) we are able to formulate the minimax problem as being equivalent to an optimum experimental design problem, too. This makes the whole experimental design apparatus available for finding minimax kriging predictors. Furthermore some hints are given, how the approach to spatial sampling design with one a priori fixed covariance function may be extended by means of minimax kriging to a whole set of a priori plausible covariance functions such that the resulting designs are robust. The theoretical developments are illustrated with two examples taken from radiological monitoring and soil science.
机译:本文提出了在地统计模型环境中进行采样设计和最小极大值预测的新思路。两种方法均基于回归设计思想。因此,本文附录介绍了具有不相关误差的线性回归模型的最佳贝叶斯实验设计理论。然后将提出的方法和算法应用于相关随机场的空间设置。具体来说,请参见“教区”。参考图1,我们将通过具有大量具有随机幅度的回归函数的回归模型来近似各向同性随机场,类似于Fedorov和Flanagan(J Combat Inf Syst Sci:23,1997)。这些作者利用各向同性随机场的Karhunen Loeve逼近。我们改用所谓的极谱近似法。即,我们通过具有随机振幅的正弦-余弦-贝塞尔表面谐波的回归模型来近似各向同性随机场,然后根据Fedorov和Flanagan(J Combat Inf Syst Sci:23,1997),应用标准贝叶斯实验设计贝叶斯回归模型的算法。当协方差函数在某些先验合理的协方差函数集合中发生变化时,第2节讨论了最小极大值预测。使用归因于Sion的极小极大定理(Pac J Math 8:171-176,1958),我们也可以将极小极大问题公式化为等效于最佳实验设计问题。这使得整个实验设计设备可用于找到minimax克里金预测变量。此外,还给出了一些提示,如何借助极小极大克里金法将具有一个先验固定协方差函数的空间采样设计方法扩展到整个先验合理协方差函数集,从而使所得设计具有鲁棒性。用放射监测和土壤科学中的两个例子说明了理论发展。

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