Evaluating Heterogeneous Treatment Effects


[Up] [Top]

Documentation for package ‘evalHTE’ version 0.1.0

Help Pages

compute_qoi Compute Quantities of Interest (GATE, GATEcv, URATE)
compute_qoi_user Compute Quantities of Interest (GATE, GATEcv, URATE) with user defined functions
consist.test The Consistency Test for Grouped Average Treatment Effects (GATEs) in Randomized Experiments
consistcv.test The Consistency Test for Grouped Average Treatment Effects (GATEs) under Cross Validation in Randomized Experiments
estimate_hte Evaluate Heterogeneous Treatment Effects
evaluate_hte Evaluate Heterogeneous Treatment Effects
GATE Estimation of the Grouped Average Treatment Effects (GATEs) in Randomized Experiments
GATEcv Estimation of the Grouped Average Treatment Effects (GATEs) in Randomized Experiments Under Cross Validation
het.test The Heterogeneity Test for Grouped Average Treatment Effects (GATEs) in Randomized Experiments
hetcv.test The Heterogeneity Test for Grouped Average Treatment Effects (GATEs) under Cross Validation in Randomized Experiments
plot.hte Plot the GATE estimate
plot_CI Plot Confidence Intervals
plot_CI.hte Plot the uniform confidence interval
print.summary.hte Print
print.summary.test_hte Print
summary.hte Summarize Heterogeneity and Consistency Tests
summary.test_hte Summarize Heterogeneity and Consistency Tests
test_itr Conduct hypothesis tests
URATE This function use individualized treatment rule to identify exceptional responders. The details of the methods for this design are given in Imai and Li (2023).