We introduce a flexible parametric family of matrix-valued covariance functions for multivariate spatial random fields, where each con-stituent component is a Matérn process. The model parameters are interpretable in terms of process variance, smoothness, correlation length, and colocated correlation coefficients, which can be positive or negative. Both the marginal and the cross-covariance functions are of the Matérn type. In a data example on error fields for numerical predictions of surface pressure and temperature over the North American Pacific Northwest, we compare the bivariate Matérn model to the traditional linear model of coregionalization
Modeling of and inference on multivariate data that have been measured in space, such as temperature...
Modeling of and inference on multivariate data that have been measured in space, such as temperature...
Modeling of and inference on multivariate data that have been measured in space, such as temperature...
We introduce a flexible parametric family of matrix-valued covariance functions for multivariate spa...
We introduce a flexible parametric family of matrix-valued covariance functions for multivariate spa...
We introduce a flexible parametric family of matrix-valued covariance functions for multivariate spa...
AbstractWe derive a class of matrix valued covariance functions where the direct and cross-covarianc...
The geostatistical analysis of multivariate spatial data for inference as well as joint predictions ...
The construction of valid and flexible cross-covariance functions is a fundamental task for modeling...
AbstractWe derive a class of matrix valued covariance functions where the direct and cross-covarianc...
We broaden the well-known Gneiting class of space-time covariance functions by introducing a very ge...
We broaden the well-known Gneiting class of space-time covariance functions by introducing a very ge...
We broaden the well-known Gneiting class of space-time covariance functions by introducing a very ge...
Modeling of and inference on multivariate data that have been measured in space, such as temperature...
Modeling of and inference on multivariate data that have been measured in space, such as temperature...
Modeling of and inference on multivariate data that have been measured in space, such as temperature...
Modeling of and inference on multivariate data that have been measured in space, such as temperature...
Modeling of and inference on multivariate data that have been measured in space, such as temperature...
We introduce a flexible parametric family of matrix-valued covariance functions for multivariate spa...
We introduce a flexible parametric family of matrix-valued covariance functions for multivariate spa...
We introduce a flexible parametric family of matrix-valued covariance functions for multivariate spa...
AbstractWe derive a class of matrix valued covariance functions where the direct and cross-covarianc...
The geostatistical analysis of multivariate spatial data for inference as well as joint predictions ...
The construction of valid and flexible cross-covariance functions is a fundamental task for modeling...
AbstractWe derive a class of matrix valued covariance functions where the direct and cross-covarianc...
We broaden the well-known Gneiting class of space-time covariance functions by introducing a very ge...
We broaden the well-known Gneiting class of space-time covariance functions by introducing a very ge...
We broaden the well-known Gneiting class of space-time covariance functions by introducing a very ge...
Modeling of and inference on multivariate data that have been measured in space, such as temperature...
Modeling of and inference on multivariate data that have been measured in space, such as temperature...
Modeling of and inference on multivariate data that have been measured in space, such as temperature...
Modeling of and inference on multivariate data that have been measured in space, such as temperature...
Modeling of and inference on multivariate data that have been measured in space, such as temperature...