The aim of this paper is to present developments of an advanced geospatial analytics algorithm that improves the prediction power of a random forest regression model while addressing the issue of spatial dependence commonly found in geographical data. We applied the methodology to a simple model of mean household income in the European Union regions to allow easy understanding and reproducibility of the analysis. The results are encouraging and suggest an improvement in the prediction power compared to previous techniques. The algorithm has been implemented in R and is available in the updated version of the SpatialML package in the CRAN repository
Geographically weighted regression (GWR) procedures can be adapted to enhance the spatial features ...
Forest surveys provide critical information for many diverse interests. Data are often collected fro...
We present generalized regression analysis and spatial prediction (GRASP) conceptually as a method f...
Machine learning algorithms such as Random Forest (RF) are being increasingly applied on traditional...
Random forest and similar Machine Learning techniques are already used to generate spatial predictio...
For many decades, kriging and deterministic interpolation techniques, such as inverse distance weigh...
This paper promotes the use of random forests as versatile tools for estimating spatially disaggrega...
Spatial data mining helps to find hidden but potentially informative patterns from large and high-di...
Gridded human population data provide a spatial denominator to identify populations at risk, quantif...
In forestry, many fundamental spatial processes cannot be measured directly and data on spatial patt...
High resolution, contemporary data on human population distributions are vital for measuring impacts...
High resolution, contemporary data on human population distributions are vital for measuring impacts...
The increasing availability of remote sensing data at no or low costs can be used as ancillary data ...
Aim This study used data from temperate forest communities to assess: (1) five different stepwise se...
The focus of this dissertation is development of a novel hierarchical framework, that can be used fo...
Geographically weighted regression (GWR) procedures can be adapted to enhance the spatial features ...
Forest surveys provide critical information for many diverse interests. Data are often collected fro...
We present generalized regression analysis and spatial prediction (GRASP) conceptually as a method f...
Machine learning algorithms such as Random Forest (RF) are being increasingly applied on traditional...
Random forest and similar Machine Learning techniques are already used to generate spatial predictio...
For many decades, kriging and deterministic interpolation techniques, such as inverse distance weigh...
This paper promotes the use of random forests as versatile tools for estimating spatially disaggrega...
Spatial data mining helps to find hidden but potentially informative patterns from large and high-di...
Gridded human population data provide a spatial denominator to identify populations at risk, quantif...
In forestry, many fundamental spatial processes cannot be measured directly and data on spatial patt...
High resolution, contemporary data on human population distributions are vital for measuring impacts...
High resolution, contemporary data on human population distributions are vital for measuring impacts...
The increasing availability of remote sensing data at no or low costs can be used as ancillary data ...
Aim This study used data from temperate forest communities to assess: (1) five different stepwise se...
The focus of this dissertation is development of a novel hierarchical framework, that can be used fo...
Geographically weighted regression (GWR) procedures can be adapted to enhance the spatial features ...
Forest surveys provide critical information for many diverse interests. Data are often collected fro...
We present generalized regression analysis and spatial prediction (GRASP) conceptually as a method f...