Generalized Random Forests (Beta)


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Documentation for package ‘grf’ version 0.10.2

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average_partial_effect Estimate average partial effects using a causal forest
average_treatment_effect Estimate average treatment effects using a causal forest
causal_forest Causal forest
create_dot_body Writes each node information If it is a leaf node: show it in different color, show number of samples, show leaf id If it is a non-leaf node: show its splitting variable and splitting value
custom_forest Custom forest
export_graphviz Export a tree in DOT format. This function generates a GraphViz representation of the tree, which is then written into 'dot_string'.
get_sample_weights Given a trained forest and test data, compute the training sample weights for each test point.
get_tree Retrieve a single tree from a trained forest object.
grf GRF
instrumental_forest Intrumental forest
local_linear_forest Local Linear forest
plot.grf_tree Plot a GRF tree object.
predict.causal_forest Predict with a causal forest
predict.custom_forest Predict with a custom forest.
predict.instrumental_forest Predict with an instrumental forest
predict.local_linear_forest Predict with a local linear forest
predict.quantile_forest Predict with a quantile forest
predict.regression_forest Predict with a regression forest
print.grf Print a GRF forest object.
print.grf_tree Print a GRF tree object.
quantile_forest Quantile forest
regression_forest Regression forest
split_frequencies Calculate which features the forest split on at each depth.
test_calibration Omnibus evaluation of the quality of the random forest estimates via calibration.
tune_causal_forest Causal forest tuning
tune_local_linear_forest Local linear forest tuning
tune_regression_forest Regression forest tuning
variable_importance Calculate a simple measure of 'importance' for each feature.