Skip to content

Latest commit

 

History

History
1392 lines (1371 loc) · 141 KB

README.md

File metadata and controls

1392 lines (1371 loc) · 141 KB

awesome-offline-rl

This is a collection of research and review papers for offline reinforcement learning (offline rl). Feel free to star and fork.

Maintainers:

  • Haruka Kiyohara (Tokyo Institute of Technology / Hanjuku-kaso Co., Ltd.)
  • Yuta Saito (Hanjuku-kaso Co., Ltd. / Cornell University)

We are looking for more contributors and maintainers! Please feel free to pull requests.

format:
- [title](paper link) [links]
  - author1, author2, and author3. arXiv/conferences/journals/, year.

For any question, feel free to contact: [email protected]

Table of Contents

Papers

Review/Survey/Position Papers

Offline RL: Theory/Methods

Offline RL: Benchmarks/Experiments

Offline RL: Applications

Off-Policy Evaluation and Learning: Theory/Methods

Off-Policy Evaluation: Contextual Bandits

Off-Policy Evaluation: Reinforcement Learning

Off-Policy Learning

Off-Policy Evaluation and Learning: Benchmarks/Experiments

Off-Policy Evaluation and Learning: Applications

Open Source Software/Implementations

Blog/Podcast

Blog

Podcast

Related Workshops

Tutorials/Talks/Lectures