STAT24630 Causal Inference Methods and Case Studies
Description
In many applications of statistics, a large proportion of the questions of interest are about causality rather than questions of description or association. Does the shift to remote work cause employees to be more or less productive? How does a new tax policy affect the economic activity? Does regular exercise cause improvements in mental health, or is it that people with better mental health are more likely to exercise? In this class, we will introduce some basic concepts and methods in causal inference and focus on computation, applications and case studies related to causal inference. For causal inference methodology, the course plans to cover the potential outcome framework, randomize experiments, observational studies, sensitivity analysis and instrumental variables. For examples and case studies, we will include the California alphabet lottery, the evaluation of job training programs, clinical trials, educational experiments and many more.
Textbook:
Causal Inference for Statistics, Social, and Biomedical Sciences: An Introduction by Imbens, Guido W. and Rubin, Donald B. (2015).
A First Course in Causal Inference by Ding, Peng (2023). (suggested reading)
Grading
- Homework assignments: 20%
- There will be 4 assignments in total.
- Late homework will not be accepted for grading (medical emergencies excepted with proof).
- Homework will be submitted through Gradescope and is due at 11:59pm the due date.
- 2 Quizzes: 20%
- Final project: 40%