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...
In many environmental sciences, several correlated variables are observed at some locations of the d...
The product covariance model, the product-sum covariance model, and the integrated product and integ...
The product covariance model, the product–sum covariance model, and the integrated product and integ...
In environmental sciences, it is very common to observe spatio-temporal multiple data concerning sev...
Although there are multiple methods for modeling matrix covariance functions and matrix variograms i...
An environmental data set often concerns different correlated variables measured at some locations o...
The near simultaneous diagonalization of the sample space-time matrix covariances or variograms make...
In geostatistics, methods for characterizing the spatial or temporal variation at different scales o...
Abstract: The near simultaneous diagonalization of the sample space-time matrix covariances or vari...
In multivariate context, it is common to adopt the linear coregionalization model (LCM) based on iso...
In multivariate Geostatistics, the linear coregionalization model (LCM) has been widely used over th...
There is an increasing wealth of multivariate spatial and multivariate spatio-temporal data appearin...
The geostatistical nalysis of multivariate data involves choosing and fitting theoretical models to ...
New classes of cross-covariance functions have been recently proposed, nevertheless the linear coreg...
New classes of cross-covariance functions have been recently proposed, nevertheless the linear coreg...
In many environmental sciences, several correlated variables are observed at some locations of the d...
The product covariance model, the product-sum covariance model, and the integrated product and integ...
The product covariance model, the product–sum covariance model, and the integrated product and integ...
In environmental sciences, it is very common to observe spatio-temporal multiple data concerning sev...
Although there are multiple methods for modeling matrix covariance functions and matrix variograms i...
An environmental data set often concerns different correlated variables measured at some locations o...
The near simultaneous diagonalization of the sample space-time matrix covariances or variograms make...
In geostatistics, methods for characterizing the spatial or temporal variation at different scales o...
Abstract: The near simultaneous diagonalization of the sample space-time matrix covariances or vari...
In multivariate context, it is common to adopt the linear coregionalization model (LCM) based on iso...
In multivariate Geostatistics, the linear coregionalization model (LCM) has been widely used over th...
There is an increasing wealth of multivariate spatial and multivariate spatio-temporal data appearin...
The geostatistical nalysis of multivariate data involves choosing and fitting theoretical models to ...
New classes of cross-covariance functions have been recently proposed, nevertheless the linear coreg...
New classes of cross-covariance functions have been recently proposed, nevertheless the linear coreg...
In many environmental sciences, several correlated variables are observed at some locations of the d...
The product covariance model, the product-sum covariance model, and the integrated product and integ...
The product covariance model, the product–sum covariance model, and the integrated product and integ...