STAT 5350

Applied Causal Inference

Course Description

Introduces statistical methods used for causal inference, particularly for quasi-experimental data. Focus is on the potential outcomes framework as an organizing principle and examining the estimation of treatment effects under various assumptions. Topics include matching, instrumental variables, difference-in-difference, regression discontinuity, synthetic control, and sensitivity analysis. Examples come from various fields.


Looks like this course isn't being taught this semester.

Sort by "All" in the top right to see previous semesters.