User guide#
- 1. The basics of double/debiased machine learning
- 2. The data-backend DoubleMLData
- 3. Models
- 4. Heterogeneous Treatment Effects
- 5. Score functions
- 6. Double machine learning algorithms
- 7. Learners, hyperparameters and hyperparameter tuning
- 8. Variance estimation and confidence intervals
- 9. Sample-splitting, cross-fitting and repeated cross-fitting
- 10. Sensitivity Analysis