Causal inference Part II is a 4-day workshop in design based causal inference series. It will cover three contemporary research designs in causal inference -- difference-in-differences, synthetic control and matching/weighting methods -- as well as introduce participants to causal graphs developed by Judea Pearl and others. Each day is 8 hours with 15 minute breaks on the hour plus an hour for lunch. We will review the theory behind each design, go into detail on the intuition of the estimation strategies and identification itself, as well as explore code in R and Stata and applications using these methods. The goal as always is that participants leave the workshop with competency and confidence. This class will be a sequel to the 4-day workshop on Causal Inference Part I.
Introducing the fundamentals of DiD
Google Spreadsheet for simple DiD Calculations
Causal Inference: the Mixtape (ch. 9)
Introducing OLS and various estmators with covariate adjustments
Outcome regression (Heckman, Ichimura and Todd 1997),
Inverse probability weight estimator (Abadie 2005),
Doubly robust (Sant'Anna and Zhao 2020)
Fixed effects and Pooled OLS example,
Shiny App for Bacon Decomposition
Causal Inference: the Mixtape (chapter 8 and 9),
Two-stage DID
Robust efficient imputation estimator
stackdev in Stata (under development)
Callaway, Goodman-Bacon and Sant'Anna (2021)
Callaway, Goodman-Bacon and Sant'Anna (2021)