We propose a method for modeling spatially dependent functional data, based on regression with differential regularization. The regularizing term enables to include problem-specific information about the spatio-temporal variation of the phenomenon under study, formalized in terms of a time-dependent partial differential equation. The method is implemented using a discretization based on finite elements in space and finite differences in time. This non-tensor product basis allows to handle efficiently data distributed over complex domains and where the shape of the domain influences the phenomenon's behavior. Moreover, the method can comply with specific conditions at the boundary of the domain of interest. Simulation studies compare the pro...
We propose a method for the analysis of functional data with complex dependencies, such as spatially...
<div><p>We propose an innovative method for the accurate estimation of surfaces and spatial fields w...
We propose an innovative method for the accurate estimation of surfaces and spatial fields when prio...
We propose a method for modeling spatially dependent functional data, based on regression with diffe...
We propose a method for modelling spatially dependent functional data, based on regression with diff...
We propose a new method for the analysis of functional data defined over spatio-temporal domains. Th...
This work gives an overview of an innovative class of methods for the analysis of spatial and of fun...
Spatial regression with differential regularization is a novel class of models for the accurate esti...
We propose an innovative method, at the interface between statistics and numerical analysis, for the...
We aim at analysing geostatistical and areal data observed over irregularly shaped spatial domains a...
We propose an innovative statistical-numerical method to model spatio- temporal data, observed over ...
We develop a novel generalised linear model for the analysis of data distributed over space and time...
We propose a method for the analysis of functional data with complex dependencies, such as spatially...
<div><p>We propose an innovative method for the accurate estimation of surfaces and spatial fields w...
We propose an innovative method for the accurate estimation of surfaces and spatial fields when prio...
We propose a method for modeling spatially dependent functional data, based on regression with diffe...
We propose a method for modelling spatially dependent functional data, based on regression with diff...
We propose a new method for the analysis of functional data defined over spatio-temporal domains. Th...
This work gives an overview of an innovative class of methods for the analysis of spatial and of fun...
Spatial regression with differential regularization is a novel class of models for the accurate esti...
We propose an innovative method, at the interface between statistics and numerical analysis, for the...
We aim at analysing geostatistical and areal data observed over irregularly shaped spatial domains a...
We propose an innovative statistical-numerical method to model spatio- temporal data, observed over ...
We develop a novel generalised linear model for the analysis of data distributed over space and time...
We propose a method for the analysis of functional data with complex dependencies, such as spatially...
<div><p>We propose an innovative method for the accurate estimation of surfaces and spatial fields w...
We propose an innovative method for the accurate estimation of surfaces and spatial fields when prio...