DidacticBoost (version 0.1.1)

A Simple Implementation and Demonstration of Gradient Boosting

Description

A basic, clear implementation of tree-based gradient boosting designed to illustrate the core operation of boosting models. Tuning parameters (such as stochastic subsampling, modified learning rate, or regularization) are not implemented. The only adjustable parameter is the number of training rounds. If you are looking for a high performance boosting implementation with tuning parameters, consider the 'xgboost' package.

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install.packages('DidacticBoost')

Monthly Downloads

144

Version

0.1.1

License

GPL-3

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Last Published

April 19th, 2016

Functions in DidacticBoost (0.1.1)