We consider the problem of analyzing spatially distributed data characterized by spatial anisotropy. Following a functional data analysis approach, we propose a method based on regression with partial differential regularization, where the differential operator in the regularizing term is anisotropic and is derived from data. We show that the method correctly identifies the direction and intensity of anisotropy and returns an accurate estimate of the spatial field. The method compares favorably to both isotropic and anisotropic kriging, as tested in simulation studies under various scenarios. The method is then applied to the analysis of Switzerland rainfall data
We investigate some computational aspects of an innovative class of PDE-regularized statistical mode...
<p>In many atmospheric and earth sciences, it is of interest to identify dominant spatial patterns o...
We aim at analysing geostatistical and areal data observed over irregularly shaped spatial domains a...
We consider the problem of analyzing spatially distributed data characterized by spatial anisotropy....
This work addresses the question of building useful and valid models of anisotropic variograms for s...
Spatial regression with differential regularization is a novel class of models for the accurate esti...
This work gives an overview of an innovative class of methods for the analysis of spatial and of fun...
The efficient mapping of environmental hazards requires the development of methods for the analysis ...
Many heterogeneous media and environmental processes are statistically anisotropic, that is, their m...
Summarization: Many heterogeneous media and environmental processes are statistically anisotropic, t...
This thesis concerns the development, estimation and investigation of a general anisotropic spatial ...
The Matérn correlation function provides great flexibility for modeling spatially correlated random ...
Summarization: Random fields are useful models of spatially variable quantities, such as those occur...
We propose a method for modeling spatially dependent functional data, based on regression with diffe...
The Matérn correlation function provides great flexibility for modeling spatially correlated random...
We investigate some computational aspects of an innovative class of PDE-regularized statistical mode...
<p>In many atmospheric and earth sciences, it is of interest to identify dominant spatial patterns o...
We aim at analysing geostatistical and areal data observed over irregularly shaped spatial domains a...
We consider the problem of analyzing spatially distributed data characterized by spatial anisotropy....
This work addresses the question of building useful and valid models of anisotropic variograms for s...
Spatial regression with differential regularization is a novel class of models for the accurate esti...
This work gives an overview of an innovative class of methods for the analysis of spatial and of fun...
The efficient mapping of environmental hazards requires the development of methods for the analysis ...
Many heterogeneous media and environmental processes are statistically anisotropic, that is, their m...
Summarization: Many heterogeneous media and environmental processes are statistically anisotropic, t...
This thesis concerns the development, estimation and investigation of a general anisotropic spatial ...
The Matérn correlation function provides great flexibility for modeling spatially correlated random ...
Summarization: Random fields are useful models of spatially variable quantities, such as those occur...
We propose a method for modeling spatially dependent functional data, based on regression with diffe...
The Matérn correlation function provides great flexibility for modeling spatially correlated random...
We investigate some computational aspects of an innovative class of PDE-regularized statistical mode...
<p>In many atmospheric and earth sciences, it is of interest to identify dominant spatial patterns o...
We aim at analysing geostatistical and areal data observed over irregularly shaped spatial domains a...