UTBoost is a powerful uplift modeling library based on boosting framework over decision trees. It can handle large-scale RCT (randomized controlled trial) datasets and demonstrates superior predictive performance.
See the tutorial notebook for details.
# import approaches
from utboost import UTBClassifier, UTBRegressor
# define model (CausalGBM algorithm)
model = UTBClassifier(
ensemble_type='boosting',
criterion='gbm',
iterations=20,
max_depth=4
)
# fit model
model.fit(X=X_train, ti=ti_train, y=y_train)
# predict outcomes
preds = model.predict(X_test)
# predict uplift
uplift_preds = preds[:, 1] - preds[:, 0]
src/*
— C++ code that ultimately compiles into a libraryinclude/
— C++ header filespython-package/
— python package
This project is open-sourced under the MIT license. You can find the terms of the license here.
Junjie Gao, Xiangyu Zheng, DongDong Wang, Zhixiang Huang, Bangqi Zheng, Kai Yang. "UTBoost: A Tree-boosting based System for Uplift Modeling".