geoGAM - Select Sparse Geoadditive Models for Spatial Prediction
A model building procedure to build parsimonious
geoadditive model from a large number of covariates.
Continuous, binary and ordered categorical responses are
supported. The model building is based on component wise
gradient boosting with linear effects, smoothing splines and a
smooth spatial surface to model spatial autocorrelation. The
resulting covariate set after gradient boosting is further
reduced through backward elimination and aggregation of factor
levels. The package provides a model based bootstrap method to
simulate prediction intervals for point predictions. A test
data set of a soil mapping case study in Berne (Switzerland) is
provided. Nussbaum, M., Walthert, L., Fraefel, M., Greiner, L.,
and Papritz, A. (2017) <doi:10.5194/soil-3-191-2017>.