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Code for NeurIPS 2022 paper Exploiting Reward Shifting in Value-Based Deep RL

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🙋 How To Design A Reward Function For Your Reinforcement Learning Task (In Value-Based RL)?

  • To boost exploration, you should use negative rewards, such that the agent will visit more unvisited state-action pairs.
  • To boost exploitation, you should use positive rewards, such that the agent will repeatedly visit previously visited state-action pairs.

Our paper provides a detailed analysis of how reward design affects the learning process.

This repo is related to the topic of

  • Reward Design in Deep RL
  • Reward Design for Better Exploration
  • Ensemble in Deep Reinforcement Learning
  • Diversity Boosting in Q-Value Network Ensemble
  • Offline-RL (conservation via reward shifting)
  • Value-Based Deep-RL

🚀 Let us Exploit Reward Shifting in Value-Based Deep-RL!

Key Insight: A positive reward shifting leads to conservative exploitation, and a negative reward shifting leads to curiosity-driven exploration.

🏋️ Reproduction & Basic Usage:

To reproduce our results, please follow instructions in each folder. Actually, the easiest way of reproduction is to play with reward shifting!

🧑🏻‍💻 In your tasks with value-based DRL, please just try to add a line right after the line of interaction with your environment, e.g.,

next_s, r, done, info = env.step(a)

r = r + args.shifting_constant

❕Don't forget to remove such a shift in evaluating your policy :)

💡 Potential Ideas

Here are several potential extensions of our work:

  • Theoretically, the guidance of choosing shifting constant values.
  • Methodologically, the choice of ensemble bias values
  • Empirically, combining upper and lower bound (as non-linear combination) with Thompson Sampling for better exploration.
  • Other linear reward shaping, e.g., with non-trivial scaling factor k.

📝 BibTex

@article{sun2022exploit,
  title={Exploit Reward Shifting in Value-Based Deep-RL: Optimistic Curiosity-Based Exploration and Conservative Exploitation via Linear Reward Shaping},
  author={Sun, Hao and Han, Lei and Yang, Rui and Ma, Xiaoteng and Guo, Jian and Zhou, Bolei},
  journal={Advances in Neural Information Processing Systems},
  volume={35},
  pages={37719--37734},
  year={2022}
}