Spatial statistics is concerned with the analysis of data that have spatial locations associated with them, and those locations are used to model statistical dependence between the data. The spatial data are treated as a single realization from a probability model that encodes the dependence through both fixed effects and random effects, where randomness is manifest in the underlying spatial process and in the noisy, incomplete measurement process. The focus of this review article is on the use of basis functions to provide an extremely flexible and computationally efficient way to model spatial processes that are possibly highly nonstationary. Several examples of basis-function models are provided to illustrate how they are used in Gaussia...
Environmental datasets such as those from remote-sensing platforms and sensor net-works are often sp...
International audienceStationary Random Functions have been successfully applied in geostatistical a...
A multi-resolution basis is developed to predict two-dimensional spatial fields based on irregularly...
Stationary Random Functions have been sucessfully applied in geostatistical applications for decades...
Stationary Random Functions have been sucessfully applied in geostatistical applications for decades...
With the proliferation of modern high-resolution measuring instruments mounted on satel-lites, plane...
When dealing with high-dimensional georeferenced data, the need of spatial predictions often results...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
Kriging and cokriging and their several related versions are techniques widely known and used in spa...
Environmental datasets such as those from remote-sensing platforms and sensor net-works are often sp...
International audienceStationary Random Functions have been successfully applied in geostatistical a...
A multi-resolution basis is developed to predict two-dimensional spatial fields based on irregularly...
Stationary Random Functions have been sucessfully applied in geostatistical applications for decades...
Stationary Random Functions have been sucessfully applied in geostatistical applications for decades...
With the proliferation of modern high-resolution measuring instruments mounted on satel-lites, plane...
When dealing with high-dimensional georeferenced data, the need of spatial predictions often results...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
Kriging and cokriging and their several related versions are techniques widely known and used in spa...
Environmental datasets such as those from remote-sensing platforms and sensor net-works are often sp...
International audienceStationary Random Functions have been successfully applied in geostatistical a...
A multi-resolution basis is developed to predict two-dimensional spatial fields based on irregularly...