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A hierarchical approach to multivariate spatial modeling and prediction

机译:多层空间建模和预测的分层方法

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We propose a hierarchical model for multivariate spatial modeling and prediction under which one specifies a joint distribution for a multivariate spatial process indirectly through specification of simpler conditional models. This approach is similar to standard methods known as cokriging and "kriging with external drift," but avoids some of the inherent difficulties in these two approaches including specification of valid joint covariance models and restriction to exhaustively sampled covariates. Moreover, both existing approaches can be formulated in this hierarchical framework. The hierarchical approach is ideally suited for, but not restricted for use in, situations in which known "cause/effect" relationships exist. Because the hierarchical approach models dependence between variables in conditional means, as opposed to cross-covariances, very complicated relationships are more easily parameterized. We suggest an iterative estimation procedure that combines generalized least squares with imputation of missing values using the best linear unbiased predictor. An example is given that involves prediction of a daily ozone summary from maximum daily temperature in the Midwest.
机译:我们提出了一种用于多元空间建模和预测的层次模型,在该模型下,通过指定更简单的条件模型间接指定了多元空间过程的联合分布。此方法类似于称为“共同克里金法”和“带有外部漂移的克里金法”的标准方法,但是避免了这两种方法中的一些固有困难,包括有效联合协方差模型的规范以及对详尽采样的协变量的限制。此外,可以在此分层框架中制定两种现有方法。分层方法非常适合但不限于在存在已知“因果”关系的情况下使用。因为分层方法以条件均值来建模变量之间的依存关系(与交​​叉协方差相反),所以非常容易将参数化为非常复杂的关系。我们建议使用最佳线性无偏预测器将广义最小二乘与缺失值的归并相结合的迭代估计程序。给出了一个示例,其中涉及根据中西部地区的每日最高温度来预测每日的臭氧总量。

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