| conditional_means | Estimate mean rewards mu for each treatment a |
| conditional_means.causal_forest | Estimate mean rewards mu for each treatment a |
| conditional_means.causal_survival_forest | Estimate mean rewards mu for each treatment a |
| conditional_means.instrumental_forest | Estimate mean rewards mu for each treatment a |
| conditional_means.multi_arm_causal_forest | Estimate mean rewards mu for each treatment a |
| double_robust_scores | Matrix Gamma of scores for each treatment a |
| double_robust_scores.causal_forest | Matrix Gamma of scores for each treatment a |
| double_robust_scores.causal_survival_forest | Matrix Gamma of scores for each treatment a |
| double_robust_scores.instrumental_forest | Matrix Gamma of scores for each treatment a |
| double_robust_scores.multi_arm_causal_forest | Matrix Gamma of scores for each treatment a |
| gen_data_epl | Example data generating process from Policy Learning With Observational Data |
| gen_data_mapl | Example data generating process from Offline Multi-Action Policy Learning: Generalization and Optimization |
| hybrid_policy_tree | Hybrid tree search |
| multi_causal_forest | (deprecated) One vs. all causal forest for multiple treatment effect estimation |
| plot.policy_tree | Plot a policy_tree tree object. |
| policy_tree | Fit a policy with exact tree search |
| predict.policy_tree | Predict method for policy_tree |
| print.policy_tree | Print a policy_tree object. |