For many decades, kriging and deterministic interpolation techniques, such as inverse distance weighting and nearest neighbour interpolation, have been the most popular spatial interpolation techniques. Kriging with external drift and regression kriging have become basic techniques that benefit both from spatial autocorrelation and covariate information. More recently, machine learning techniques, such as random forest and gradient boosting, have become increasingly popular and are now often used for spatial interpolation. Some attempts have been made to explicitly take the spatial component into account in machine learning, but so far, none of these approaches have taken the natural route of incorporating the nearest observations and their...
Gridded monthly rainfall estimates can be used for a number of research applications, including hydr...
Stable isotopes of precipitation are important natural tracers in hydrology, ecology, and forensics....
Spatial interpolation is a class of estimation problems where locations with known values are used t...
For many decades, kriging and deterministic interpolation techniques, such as inverse distance weigh...
Random forest and similar Machine Learning techniques are already used to generate spatial predictio...
In this thesis, the inverse distance weighting, different kriging methods, ordinary least squares an...
This study was designed to compare the performance - in terms of bias and accuracy - of four differe...
In spatial statistics, a common method for prediction over a Gaussian random field (GRF) is maximum ...
This study was designed to compare the performance – in terms of bias and accuracy – of four differe...
In this survey we present various classical geostatistical prediction methods with a focus on interp...
Machine learning algorithms such as Random Forest (RF) are being increasingly applied on traditional...
The aim of this paper is to present developments of an advanced geospatial analytics algorithm that ...
This study introduces a hybrid spatial modelling framework, which accounts for spatial non-stationar...
Spatial prediction is commonly achieved under the assumption of a Gaussian random field (GRF) by obt...
High-resolution yield maps are an essential tool in modern agriculture. Using spatial interpolation,...
Gridded monthly rainfall estimates can be used for a number of research applications, including hydr...
Stable isotopes of precipitation are important natural tracers in hydrology, ecology, and forensics....
Spatial interpolation is a class of estimation problems where locations with known values are used t...
For many decades, kriging and deterministic interpolation techniques, such as inverse distance weigh...
Random forest and similar Machine Learning techniques are already used to generate spatial predictio...
In this thesis, the inverse distance weighting, different kriging methods, ordinary least squares an...
This study was designed to compare the performance - in terms of bias and accuracy - of four differe...
In spatial statistics, a common method for prediction over a Gaussian random field (GRF) is maximum ...
This study was designed to compare the performance – in terms of bias and accuracy – of four differe...
In this survey we present various classical geostatistical prediction methods with a focus on interp...
Machine learning algorithms such as Random Forest (RF) are being increasingly applied on traditional...
The aim of this paper is to present developments of an advanced geospatial analytics algorithm that ...
This study introduces a hybrid spatial modelling framework, which accounts for spatial non-stationar...
Spatial prediction is commonly achieved under the assumption of a Gaussian random field (GRF) by obt...
High-resolution yield maps are an essential tool in modern agriculture. Using spatial interpolation,...
Gridded monthly rainfall estimates can be used for a number of research applications, including hydr...
Stable isotopes of precipitation are important natural tracers in hydrology, ecology, and forensics....
Spatial interpolation is a class of estimation problems where locations with known values are used t...