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Calendar

Week 1

Week 2

Jan 16
Homework HW1 Released
Google Doc
Jan 17
Lecture Inference in linear models
[PPTX]
[PDF]
[Demo Code]
Basics of statistical inference in linear models; confidence intervals for p « n; interpretation of coefficient as partialling out; inference on ATE from trials via regression; Revisiting the role of covariates in randomized trials: precision and heterogeneity: variance characterization and comparisons
Reading Materials
Coding Materials
Further Reading
Jan 19
Lecture Prediction in high dimensional linear models
[PPTX]
[PDF]
[Demo Code]
High dimensional methods and prediction; regularization; lasso; elasticnet;
Reading Materials
Coding Materials

Week 3

Jan 23
Homework HW2 Released
Google Doc
Jan 24
Homework HW1 Due
gradescope
Lecture Inference in high-dimensional linear models
[PPTX]
[PDF]
[Demo Code]
double lasso; partialling out; intro to Neyman orthogonality; joint inference on multiple parameters
Reading Materials
Coding Materials
Jan 26
Lecture Causality in observational data
[PPTX]
[PDF]
confounding; conditional ignorability; identification by conditioning; identification via propensity scores
Reading Materials
Further Reading

Week 4

Jan 30
Homework HW3 Released
Google Doc
Jan 31
Homework HW2 Due
gradescope
Lecture Structural Equations Models and DAGs
[PPTX]
[PDF]
language of structural equation models (SEMs); conditional exogeneity; language of interventions and “fixing”; direct and in-direct effects
Reading Materials
Further Reading
Feb 2
Lecture General DAGs and Counterfactuals
[PPTX]
[PDF]
Single World Intervention Graphs (SWIGs); D-separation; Interventions; Re-visting identification by conditioning; Proof of D-separation implies conditional independence
Reading Materials
Further Reading

Week 5

Week 6

Feb 14
Homework HW4 Due
gradescope
Lecture Modern Non-Linear Prediction 2
[PPTX]
[PDF]
[Demo Code]
neural networks; stacking; auto-ml; feature engineering and pre-trained models
Reading Materials
Coding Materials
Further Reading
Feb 16
Lecture Statistical inference with non-linear models
[PPTX]
[PDF]
Debiased ML for ATE under partially linear and fully non-linear models; Generic debiased ML framework
Reading Materials
Coding Materials

Week 7

Week 8

Feb 28
Lecture Unobserved Confounding and Instruments
[PPTX]
[PDF]
Local Average Treatment Effect (LATE); Debiased ML inference in partially linear and non-linear IV models; inference with weak instruments; DML with weak identification
Reading Materials
Coding Materials
Mar 2
Lecture Heterogeneous Effects and Policy Learning
[PPTX]
[PDF]
Estimation of Conditional Average Treatment Effects (CATE); Best Linear CATE; Inference on Best Linear CATE
Further Reading
Mar 5
Homework HW5 Due

Week 9

Week 10

Mar 13
Homework HW7 Released
[Google Doc]
Mar 14
Lecture Longitudinal Data and Dynamic Treatment Regime
[PPTX]
[PDF]
[Demo]
Further Reading
Mar 16
Lecture Discussion
[PPTX]
[PDF]
Mar 17
Homework Part I of HW7 Due
Mar 23
Homework Part II of HW7 Due (hard deadline)

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