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Causal Identification

Apr 4
Lecture Potential Outcomes and DAGs
Causal identification via the potential outcomes framework, the structural equation framework and its DAG representation. Single world intervention graphs (SWIGs) and identification by adjustment.
Required Reading Materials
Further Reading
Apr 6
Lecture DAGs, D-separation and Identification by Conditioning
Proof of D-separation implies conditional independence.
Required Reading Materials
Further Reading Materials

Causal Identification

Apr 11
Lecture Unobserved Confounding beyond DAGs
Causal identification in the presence of unobserved confounding beyond DAGs. Front-Door, Instrumental variables (IV), Diff-in-Diff (DiD), Regression Discontinuity Design (RDD).
Required Reading Materials
Further Reading Materials
Apr 13
Lecture Unobserved Confounding beyond DAGs
Causal identification in the presence of unobserved confounding beyond DAGs. (Synthetic Controls).
Required Reading Materials

Student Presentations

Apr 14
Project Proposal Due

Semi-Parametric Inference and Causal Estimation

The Dynamic Treatment Regime

Apr 25
Lecture Identification and Inference in Dynamic Regimes
Identification and inference of dynamic counterfactual policies (non-parametric and semi-parametric). Estimation of optimal dynamic regimes and g-estimation. Identification proof. Auto-DML and proof for dynamic regime
Required Reading Materials
Further Reading Materials
Apr 27
Student Presentations

Statistical Learning Theory for Heterogeneous Effects

May 2
Lecture Orthogonal statistical learning
Orthogonal statistical learning theory. Localized rademacher complexities and generalization bounds.
Required Reading Materials
Further Reading Materials
May 4
Student Presentations
May 5:
Project Literature Review Due

Non-Parametric Inference for Heterogeneous Effects

May 9
Lecture Non-Parametric Confidence Intervals
Non-parametric confidence intervals, random forests and nearest neighbors. Proof of asymptotic linearity for kernel based moment estimators. Proof of bias for k-NN and (maybe proof of bias for Trees). Proof of confidence intervals with nuisance parameters and local orthogonality.
Required Reading Materials
Further Reading Materials
May 11
Student Presentations

Non-Parametric Learning and Conditional Moment Restrictions

May 16
Lecture Adversarial estimators for Conditional Moment Problems
Adversarial estimators for conditional moment restrictions. Statistical learning theory for adversarial estimators. Confidence intervals on functionals of endogenous regression functions. Proof of the rate for adversarial estimators based on the localized complexities. Proof of the auto-debiased approach for functionals of endogenous regressions.
Required Reading Materials
Further Reasing Materials
May 18
Student Presentations

Sensitivity Analysis and Causal ML

Representation Learning and Causal Inference

Causal Discovery and Post-Discovery Inference


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