causal-forest
causal-forest copied to clipboard
Implements the Causal Forest algorithm formulated in Athey and Wager (2018).
causal-forest
Word of warning
The package is still in development stage and should not be used other than for experimental reasons. With version 0.1.0 we will benchmark our code against existing code.
Introduction
The cforest
package can be used to estimate heterogeneous treatment effects
in a Neyman-Rubin potential outcome framework.
It implements the Causal Forest algorithm first formulated in Athey and Wager (2018).
Install
The package can be installed via conda. To do so, type the following commands in a terminal:
conda install -c timmens cforest
Documentation
The documentation is hosted at https://causal-forest.readthedocs.io/en/latest/.
Example
Complete example:
For a complete working example going through all main features please view our example notebook.
Minimal example:
from cforest.forest import CausalForest
X, t, y = simulate_data()
cf = CausalForest()
cf = cf.fit(X, t, y)
XX = simulate_new_features()
predictions = cf.predict(XX)
References
-
Athey and Imbens, 2016, Estimation and Inference of Heterogeneous Treatment Effects using Random Forests
-
Athey and Wager, 2019, Recursive partitioning for heterogeneous causal effects
-
Athey, Tibshirani and Wager, 2019, Generalized random forests