The gbm package (which stands for generalized boosted models) implements extensions to Freund and Schapire’s AdaBoost algorithm and Friedman’s gradient boosting machine. It includes regression methods for least squares, absolute loss, t-distribution loss, quantile regression, logistic, multinomial logistic, Poisson, Cox proportional hazards partial likelihood, AdaBoost exponential loss, Huberized hinge loss, and Learning to Rank measures (i.e., LambdaMart).
The gbm package is retired and no longer under active development. We will only make the necessary changes to ensure that gbm remain on CRAN. For the most part, no new features will be added, and only the most critical of bugs will be fixed.
This is a maintained version of gbm
back compatible to CRAN versions of gbm
2.1.x. It exists mainly for the purpose of reproducible research and data analyses performed with the 2.1.x versions of gbm
. For newer development, and a more consistent API, try out the gbm3 package!