Blessing From Human-ai Interaction: Super Reinforcement Learning In Confounded Environments
2022 Β· Jiayi Wang, Zhengling Qi, Chengchun Shi
Abstract
As AI becomes more prevalent throughout society, effective methods of integrating humans and AI systems that leverage their respective strengths and mitigate risk have become an important priority. In this paper, we introduce the paradigm of super reinforcement learning that takes advantage of Human-AI interaction for data driven sequential decision making. This approach utilizes the observed action, either from AI or humans, as input for achieving a stronger oracle in policy learning for the decision maker (humans or AI). In the decision process with unmeasured confounding, the actions taken by past agents can offer valuable insights into undisclosed information. By including this information for the policy search in a novel and legitimate manner, the proposed super reinforcement learning will yield a super-policy that is guaranteed to outperform both the standard optimal policy and the behavior one (e.g., past agents' actions). We call this stronger oracle a blessing from human-AI in
Authors
(none)
Tags
Stats
Related papers
- Human-ai Coordination Via Human-regularized Search And Learning (2022)0.00
- Towards Optimizing Human-centric Objectives In Ai-assisted Decision-making With Offline Reinforcement Learning (2024)0.00
- Improving Multimodal Interactive Agents With Reinforcement Learning From Human Feedback (2022)0.00
- Enhancing Human Experience In Human-agent Collaboration: A Human-centered Modeling Approach Based On Positive Human Gain (2024)0.00
- Human AI Interaction Loop Training: New Approach For Interactive Reinforcement Learning (2020)0.00
- A Hierarchical Approach To Population Training For Human-ai Collaboration (2023)0.00
- Learning To Influence Human Behavior With Offline Reinforcement Learning (2023)0.00
- Reinforcement Learning On Human Decision Models For Uniquely Collaborative AI Teammates (2021)0.00