Interpolation of spatial data has been regarded in many different forms, varying from deterministic to stochastic, parametric to nonparametric, and purely data-driven to geostatistical methods. In this study, we propose a nonparametric interpolator, which combines information theory with probability aggregation methods in a geostatistical framework for the stochastic estimation of unsampled points. Histogram via entropy reduction (HER) predicts conditional distributions based on empirical probabilities, relaxing parameterizations and, therefore, avoiding the risk of adding information not present in data. By construction, it provides a proper framework for uncertainty estimation since it accounts for both spatial configuration and data valu...
Water is the most essential resource for the presence of life. Consequently, humanity is completely ...
Geostatistics provides an efficient tool for mapping environmental variables from observations an...
The paper presents some contemporary approaches to spatial environmental data analysis. The main top...
Uncertainty quantification is an important topic for many environmental studies, such as identifying...
Interpolation techniques for spatial data have been applied frequently in various fields of geoscien...
AbstractIn this paper a Bayesian alternative to Kriging is developed. The latter is an important too...
The widely applied geostatistical interpolation methods of ordinary kriging (OK) or external drift k...
none2siStatistical information for empirical analysis is very frequently available at a higher level...
This paper deals with three related problems in a geostatistical context. First, some data are avail...
Gómez-Hernández, JJ.; Scheidt, C. (2013). Special Issue on Environmental Geostatistics. Mathematical...
An explicit optimal linear spatial predictor is derived. The spatial correlations are imposed by mea...
A key problem in environmental monitoring is the spatial interpolation. The main current approach in...
In this article objective have been made to reviews different geostatistical methods available to es...
Natural processes encountered in mining, hydrogeologic, environmental, etc. applications usually are...
[[abstract]]In many fields of science, predicting variables of interest over a study region based on...
Water is the most essential resource for the presence of life. Consequently, humanity is completely ...
Geostatistics provides an efficient tool for mapping environmental variables from observations an...
The paper presents some contemporary approaches to spatial environmental data analysis. The main top...
Uncertainty quantification is an important topic for many environmental studies, such as identifying...
Interpolation techniques for spatial data have been applied frequently in various fields of geoscien...
AbstractIn this paper a Bayesian alternative to Kriging is developed. The latter is an important too...
The widely applied geostatistical interpolation methods of ordinary kriging (OK) or external drift k...
none2siStatistical information for empirical analysis is very frequently available at a higher level...
This paper deals with three related problems in a geostatistical context. First, some data are avail...
Gómez-Hernández, JJ.; Scheidt, C. (2013). Special Issue on Environmental Geostatistics. Mathematical...
An explicit optimal linear spatial predictor is derived. The spatial correlations are imposed by mea...
A key problem in environmental monitoring is the spatial interpolation. The main current approach in...
In this article objective have been made to reviews different geostatistical methods available to es...
Natural processes encountered in mining, hydrogeologic, environmental, etc. applications usually are...
[[abstract]]In many fields of science, predicting variables of interest over a study region based on...
Water is the most essential resource for the presence of life. Consequently, humanity is completely ...
Geostatistics provides an efficient tool for mapping environmental variables from observations an...
The paper presents some contemporary approaches to spatial environmental data analysis. The main top...