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首页> 外文期刊>Stochastic environmental research and risk assessment >Choosing suitable linear coregionalization models for spatio-temporal data
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Choosing suitable linear coregionalization models for spatio-temporal data

机译:选择合适的线性核心化模型,用于时空数据

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摘要

In multivariate spatio-temporal Geostatistics, direct and cross-correlations among the variables of interest are measured by the matrix-valued covariance function. In this paper, a new and complete procedure useful for selecting an appropriate spatio-temporal linear coregionalization model (ST-LCM) with suitable models for the basic components is proposed. Thus, after detecting the spatio-temporal correlation of the latent components, through simultaneous diagonalization of the sample covariance matrices, some essential characteristics of each component are tested so that an aware choice for basic covariance models can be made. In the literature, some statistical tests to assess separability and symmetry of the covariance matrix, as well as the adequacy of the LCM were proposed; however in this paper further aspects on the basic components are investigated. All steps of the proposed procedure for analyzing and modeling the components of an ST-LCM are discussed in a case study where a very large spatio-temporal data set, concerning two environmental variables, is considered.
机译:在多变量时空地质地质的中,感兴趣的变量之间的直接和互相关是通过矩阵值的协方差函数来测量的。在本文中,提出了一种用于选择具有合适模型的基本组件的适当的时空线性核心化模型(ST-LCM)的新的和完整的过程。因此,在检测到潜伏部件的时空相关性之后,通过样本协方差矩阵的同时对角化,测试每个组件的一些基本特征,从而可以进行基本协方差模型的感知选择。在文献中,提出了一些统计测试,以评估协方差矩阵的可分离性和对称性,以及LCM的充分性;然而,在本文中,研究了基本组分的其他方面。在考虑关于两个环境变量的一个非常大的时空数据集的情况下,讨论了分析和建模ST-LCM组件的所提出的方法的所有步骤。

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