A new method based on distances for modeling continuous random data in Gaussian random fields is presented. In non-stationary cases in which a trend or drift is present, dealing with information in regionalized mixed variables (including categorical, discrete and continuous variables) is common in geosciences and environmental sciences. The proposed distance-based method is used in a geostatistical model to estimate the trend and the covariance structure, which are key features in interpolation and monitoring problems. This strategy takes full advantage of the information at hand due to the relationship between observations, by using a spectral decomposition of a selected distance and the corresponding principal coordinates. Unconditional s...
There is a need for efficient methods for estimating trends in spatio-temporal Earth Observation dat...
This paper discusses a project on the completion of a database of socio-economic indicators across t...
We develop spatial statistical models for stream networks that can estimate relationships between a ...
In the context of local interpolators, radial basis functions (RBFs) are known to reduce the computa...
Random field theory has been used to model the spatial average soil properties, whereas the most wid...
The capability to predict changes of spatial regions is important for an intelligent system that int...
Spatial data (e.g., phytopathogenic data) do not always meet assumptions such as stationarity, isotr...
When dealing with high-dimensional georeferenced data, the need of spatial predictions often results...
AbstractGaussian geostatistical models (GGMs) and Gaussian Markov random fields (GMRFs) are two dist...
This paper considers spatial data z, z(s2), z(sn) collected at n locations, with the objective of pr...
In this survey we present various classical geostatistical prediction methods with a focus on interp...
In many problems in geostatistics the response variable of interest is strongly related to the under...
In an increasing number of studies, collected data are curves; when functional data are spatially de...
En geoestadística se resuelve el problema de predicción espacial de una variable aleatoria, vector a...
This paper considers spatial data z(s1), z(s2), ... , z(sn) collected at n locations, with the objec...
There is a need for efficient methods for estimating trends in spatio-temporal Earth Observation dat...
This paper discusses a project on the completion of a database of socio-economic indicators across t...
We develop spatial statistical models for stream networks that can estimate relationships between a ...
In the context of local interpolators, radial basis functions (RBFs) are known to reduce the computa...
Random field theory has been used to model the spatial average soil properties, whereas the most wid...
The capability to predict changes of spatial regions is important for an intelligent system that int...
Spatial data (e.g., phytopathogenic data) do not always meet assumptions such as stationarity, isotr...
When dealing with high-dimensional georeferenced data, the need of spatial predictions often results...
AbstractGaussian geostatistical models (GGMs) and Gaussian Markov random fields (GMRFs) are two dist...
This paper considers spatial data z, z(s2), z(sn) collected at n locations, with the objective of pr...
In this survey we present various classical geostatistical prediction methods with a focus on interp...
In many problems in geostatistics the response variable of interest is strongly related to the under...
In an increasing number of studies, collected data are curves; when functional data are spatially de...
En geoestadística se resuelve el problema de predicción espacial de una variable aleatoria, vector a...
This paper considers spatial data z(s1), z(s2), ... , z(sn) collected at n locations, with the objec...
There is a need for efficient methods for estimating trends in spatio-temporal Earth Observation dat...
This paper discusses a project on the completion of a database of socio-economic indicators across t...
We develop spatial statistical models for stream networks that can estimate relationships between a ...