English

Improving Multimodal Interactive Agents with Reinforcement Learning from Human Feedback

Machine Learning 2022-11-22 v1 Human-Computer Interaction Multiagent Systems

Abstract

An important goal in artificial intelligence is to create agents that can both interact naturally with humans and learn from their feedback. Here we demonstrate how to use reinforcement learning from human feedback (RLHF) to improve upon simulated, embodied agents trained to a base level of competency with imitation learning. First, we collected data of humans interacting with agents in a simulated 3D world. We then asked annotators to record moments where they believed that agents either progressed toward or regressed from their human-instructed goal. Using this annotation data we leveraged a novel method - which we call "Inter-temporal Bradley-Terry" (IBT) modelling - to build a reward model that captures human judgments. Agents trained to optimise rewards delivered from IBT reward models improved with respect to all of our metrics, including subsequent human judgment during live interactions with agents. Altogether our results demonstrate how one can successfully leverage human judgments to improve agent behaviour, allowing us to use reinforcement learning in complex, embodied domains without programmatic reward functions. Videos of agent behaviour may be found at https://youtu.be/v_Z9F2_eKk4.

Keywords

Cite

@article{arxiv.2211.11602,
  title  = {Improving Multimodal Interactive Agents with Reinforcement Learning from Human Feedback},
  author = {Josh Abramson and Arun Ahuja and Federico Carnevale and Petko Georgiev and Alex Goldin and Alden Hung and Jessica Landon and Jirka Lhotka and Timothy Lillicrap and Alistair Muldal and George Powell and Adam Santoro and Guy Scully and Sanjana Srivastava and Tamara von Glehn and Greg Wayne and Nathaniel Wong and Chen Yan and Rui Zhu},
  journal= {arXiv preprint arXiv:2211.11602},
  year   = {2022}
}
R2 v1 2026-06-28T06:23:20.376Z