English

Provable Multi-Party Reinforcement Learning with Diverse Human Feedback

Machine Learning 2024-03-11 v1 Artificial Intelligence Methodology Machine Learning

Abstract

Reinforcement learning with human feedback (RLHF) is an emerging paradigm to align models with human preferences. Typically, RLHF aggregates preferences from multiple individuals who have diverse viewpoints that may conflict with each other. Our work \textit{initiates} the theoretical study of multi-party RLHF that explicitly models the diverse preferences of multiple individuals. We show how traditional RLHF approaches can fail since learning a single reward function cannot capture and balance the preferences of multiple individuals. To overcome such limitations, we incorporate meta-learning to learn multiple preferences and adopt different social welfare functions to aggregate the preferences across multiple parties. We focus on the offline learning setting and establish sample complexity bounds, along with efficiency and fairness guarantees, for optimizing diverse social welfare functions such as Nash, Utilitarian, and Leximin welfare functions. Our results show a separation between the sample complexities of multi-party RLHF and traditional single-party RLHF. Furthermore, we consider a reward-free setting, where each individual's preference is no longer consistent with a reward model, and give pessimistic variants of the von Neumann Winner based on offline preference data. Taken together, our work showcases the advantage of multi-party RLHF but also highlights its more demanding statistical complexity.

Keywords

Cite

@article{arxiv.2403.05006,
  title  = {Provable Multi-Party Reinforcement Learning with Diverse Human Feedback},
  author = {Huiying Zhong and Zhun Deng and Weijie J. Su and Zhiwei Steven Wu and Linjun Zhang},
  journal= {arXiv preprint arXiv:2403.05006},
  year   = {2024}
}
R2 v1 2026-06-28T15:13:06.147Z