⛄️ Last updated on June, 2022.
Use this HackMD link to collaboratively viewing and edit this page.
TBD.
- CMPUT 653 Theoretical Foundations of Reinforcement Learning by Csaba Szepesvári at the University of Alberta.
- CS 598 Statistical Reinforcement Learning by Nan Jiang at UIUC.
- CS 6789: Foundations of Reinforcement Learning by Wen Sun at Cornell University and Sham Kakade at University of Washington, with a book named Reinforcement Learning: Theory and Algorithms.
- RL Theory Seminars, and its YouTube page.
- Program on Theory of Reinforcement Learning at Simons Institute.
- OpenAI's Key Papers in Deep RL and a summary, 2018.
- Bootcamp on Theory of Reinforcement Learning at Simons Institute, 2020.
- Offline Reinforcement Learning Tutorial at NeurIPS 2020.
- Offline Reinforcement Learning Workshop at NeurIPS 2020.
- Statistical Foundations of Reinforcement Learning at COLT 2021.
- Workshop on Reinforcement Learning Theory at ICML 2021.
- Workshop on Multi-Agent Reinforcement Learning and Bandit Learning at Simons Institute, 2021.