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Multivariate geostatistical mapping of radioactive contamination in the Maddalena Archipelago (Sardinia, Italy): spatial special issue

机译:马达莱纳群岛(意大利撒丁岛)放射性污染的多变量地统计图:空间特刊

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摘要

To improve the quality of prediction of radioactive contamination, geostatistical methods, and in particular multivariate geostatistical models, are increasingly being used. These methods, however, are optimal only in the case in which the data may be assumed Gaussian and do not properly cope with data measurements that are discrete, nonnegative or show some degree of skewness. To deal with these situations, here we consider a hierarchical model in which non-Gaussian variables of different kind are handled simultaneously. We show that when observations are assumed to be conditionally distributed as Poisson and Gamma, variograms and cross-variograms have convenient simple forms, and estimation of the parameters of the model can be carried out by Monte Carlo EM. This work was inspired by radioactive contamination data from the Maddalena Archipelago (Sardinia, Italy).
机译:为了提高放射性污染的预测质量,越来越多地统计方法,尤其是多元地统计模型。但是,这些方法仅在以下情况下才是最佳方法:假定数据是高斯的,并且不能正确处理离散,非负或显示一定程度的偏度的数据。为了应对这些情况,在这里我们考虑一个分层模型,其中同时处理不同种类的非高斯变量。我们表明,当假设观测值有条件地分布为Poisson和Gamma时,变异函数和交叉变异函数具有方便的简单形式,并且可以通过Monte Carlo EM进行模型参数的估计。这项工作的灵感来自马达莱纳群岛(意大利撒丁岛)的放射性污染数据。

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