Publication | Open Access
A Forest of Forests: A Spatially Weighted and Computationally Efficient Formulation of Geographical Random Forests
83
Citations
21
References
2022
Year
EngineeringForest BiometricsLand UseForestryGeographic AnalyticsSocial SciencesData ScienceData MiningSpatially WeightedGeospatial AnalyticsComputationally Efficient FormulationStatisticsSpatial ScienceSpatial Statistical AnalysisGeographyGeographical Random ForestsForecastingDeforestationQuantitative Spatial ModelMean Household IncomeSpatialml PackageForest InventoryGeospatial DataSpatial StatisticsPrediction Power
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.
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