The following is a list of free courses in Causal Inference, sorted by format and date.
-
- Author: Kosuke Imai (Harvard University)
- Year: 2022
- Lectures: 11 x 0h:50 [Material]
- Topics: PO, ATE, IV, RD, matching, IPW, FE, DiD, CATE
-
Machine Learning and Causal Inference
- Author: Susan Athey, Jann Spiess, and Stephan Wager (Stanford University)
- Year: 2022
- Lectures: 19 x 0h:30
- Topics: ATE, CATE
-
Modern Topics in Uncertainty Quantification
- Author: Aaron Roth (University of Pennsylvania)
- Year: 2022
- Lectures: 12 x 2h:15
-
Modern Sampling Methods: Design and Inference
- Author: Keisuke Hirano (Yale University), Jack Porter (UW Madison)
- Year: 2022
- Lectures: 10 x 1h:15
-
- Author: Spencer Gordon (Caltech), Daniel Malinsky (Columbia University), Thomas Richardson (University of Washington), Chandler Squires (MIT)
- Year: 2022
- Lectures: 15 x 1h:05
- Topics: GCM, Causal Discovery, PO, DAGs, Experimental Design
-
- Author: Paul Goldsmith-Pinkham (Yale University)
- Year: 2021
- Lectures: 21 x 1h:00
-
- Author: Christina Heinze-Deml (ETH Zurich)
- Year: 2021
- Lectures: 12 x 2h:00
-
Difference-in-Differences Reading Group
- Author: multiple researchers
- Year: 2021
- Lectures: 9 x 1h:20
-
Causal Inference with Panel Data
- Author: Yiqing Xu (Stanford University)
- Year: 2021
- Lectures: 6 x 0h:50
-
- Author: Chris Conlon (New York University)
- Year: 2020
- Lectures: 32 x 0h:30
-
- Author: Brady Neal (Quebec AI Institute)
- Year: 2020
- Lectures: 15 x 0h:45
-
Mastering Mostly Harmless Econometrics
- Author: Alberto Abadie, Joshua Angrist, and Christopher Walters (MIT)
- Year: 2020
- Lectures: 8 x 1h:15
-
Machine Learning and Econometrics
- Author: Susan Athey, Guido Imbens (Stanford University)
- Year: 2018
- Lectures: 9 x 1h:15
-
Causal Inference and Machine Learning
- Author: Jens Hainmueller (Stanford University)
- Year: 2023
-
- Peter Hull (Brown University)
- Year: 2023
-
- Author: Fan Li (Duke University)
- Year: 2022
-
- Author: David Childers (Carnegie Mellon University)
- Year: 2022
-
Introduction to Causal Inference
- Author: Maya L. Petersen, (University of California, Berkeley) Laura B. Balzer (UMass Amherst)
- Year: 2022
-
A First Course in Causal Inference
- Author: Peng Ding (University of California, Berkeley)
- Year: 2023
-
- Author: Aaporva Lal (Stanford University)
-
- Author: Stefan Wager (Stanford University)
-
Introduction to Modern Causal Inference
- Author: Alejandro Schuler, Mark van der Laan (University of California, Berkeley)
-
A User’s Guide to Statistical Inference and Regression
- Author: Matthew Blackwell (Harvard University)