Prototypical Reward Network for Data-Efficient RLHF (2406.06606v2)
Abstract: The reward model for Reinforcement Learning from Human Feedback (RLHF) has proven effective in fine-tuning LLMs. Notably, collecting human feedback for RLHF can be resource-intensive and lead to scalability issues for LLMs and complex tasks. Our proposed framework Proto-RM leverages prototypical networks to enhance reward models under limited human feedback. By enabling stable and reliable structural learning from fewer samples, Proto-RM significantly enhances LLMs' adaptability and accuracy in interpreting human preferences. Extensive experiments on various datasets demonstrate that Proto-RM significantly improves the performance of reward models and LLMs in human feedback tasks, achieving comparable and usually better results than traditional methods, while requiring significantly less data. in data-limited scenarios. This research offers a promising direction for enhancing the efficiency of reward models and optimizing the fine-tuning of LLMs under restricted feedback conditions.
- Jinghan Zhang (18 papers)
- Xiting Wang (42 papers)
- Yiqiao Jin (27 papers)
- Changyu Chen (19 papers)
- Xinhao Zhang (13 papers)
- Kunpeng Liu (54 papers)