Geographical random forests: a spatial extension of the random forest algorithm to address spatial heterogeneity in remote sensing and population modelling
Université Libre de Bruxelles · University of Namur · +1 more institution
Abstract
Machine learning algorithms such as Random Forest (RF) are being increasingly applied on traditionally geographical topics such as population estimation. Even though RF is a well performing and generalizable algorithm, the vast majority of its implementations is still ‘aspatial’ and may not address spatial heterogenous processes. At the same time, remote sensing (RS) data which are commonly used to model population can be highly spatially heterogeneous. From this scope, we present a novel geographical implementation of RF, named Geographical Random Forest (GRF) as both a predictive and exploratory tool to model population as a function of RS covariates. GRF is a disaggregation of RF into geographical space in…
Citation impact
- FWCI
- 69.39
- Percentile
- 100%
- References
- 36
Authors
9Topics & keywords
- Random forest
- Population
- Spatial analysis
- Geography
- Mean squared error
- Spatial heterogeneity
- Covariate
- Computer science
- Life in Land