The estimation of covariance operators of spatio-temporal data is in many applications only computationally feasible under simplifying assumptions, such as separability of the covariance into strictly temporal and spatial factors. Powerful tests for this assumption have been proposed in the literature. However, as real world systems, such as climate data are notoriously inseparable, validating this assumption by statistical tests, seems inherently questionable. In this paper we present an alternative approach: By virtue of separability measures, we quantify how strongly the data’s covariance operator diverges from a separable approximation. Confidence intervals localize these measures with statistical guarantees. This method provides users w...
Spectral methods are powerful tools to study and model the dependency structure of spatial temporal ...
There is an increasing wealth of multivariate spatial and multivariate spatio-temporal data appearin...
Abstract: In the last two decades space-time models have been studied with increasing interest. The ...
The selection of an appropriate spatio-temporal covariance model for the data under study depends on...
In this article, we propose a new parametric family of models for real-valued spatio-temporal stocha...
The assumption of separability is a simplifying and very popular assumption in the analysis of spat...
Non-separable models are receiving a lot of attention, since they are more flexible to handle empiri...
In this article, we propose a new parametric family of models for real-valued spatio-temporal stocha...
Modelisation and prediction of environmental phenomena, which typically show dependence in space and...
In the last two decades space-time models have been studied with increasing interest. The main reaso...
Separable space–time covariance models are often used for modeling in environmental sciences because...
AbstractWe propose a formal test of separability of covariance models based on a likelihood ratio st...
Statistical space–time modelling has traditionally been concerned with separable covariance function...
Separable spatio-temporal covariance models, defined as the product of purely spatial and purely tem...
Statistical space–time modelling has traditionally been concerned with separable covariance function...
Spectral methods are powerful tools to study and model the dependency structure of spatial temporal ...
There is an increasing wealth of multivariate spatial and multivariate spatio-temporal data appearin...
Abstract: In the last two decades space-time models have been studied with increasing interest. The ...
The selection of an appropriate spatio-temporal covariance model for the data under study depends on...
In this article, we propose a new parametric family of models for real-valued spatio-temporal stocha...
The assumption of separability is a simplifying and very popular assumption in the analysis of spat...
Non-separable models are receiving a lot of attention, since they are more flexible to handle empiri...
In this article, we propose a new parametric family of models for real-valued spatio-temporal stocha...
Modelisation and prediction of environmental phenomena, which typically show dependence in space and...
In the last two decades space-time models have been studied with increasing interest. The main reaso...
Separable space–time covariance models are often used for modeling in environmental sciences because...
AbstractWe propose a formal test of separability of covariance models based on a likelihood ratio st...
Statistical space–time modelling has traditionally been concerned with separable covariance function...
Separable spatio-temporal covariance models, defined as the product of purely spatial and purely tem...
Statistical space–time modelling has traditionally been concerned with separable covariance function...
Spectral methods are powerful tools to study and model the dependency structure of spatial temporal ...
There is an increasing wealth of multivariate spatial and multivariate spatio-temporal data appearin...
Abstract: In the last two decades space-time models have been studied with increasing interest. The ...