The Flip Side of RLHF: On-Policy Feedback for Reward Model Self-Supervised Improvement 事件
PRODUCT_LAUNCH2026-06-01影响: MEDIUM
The Flip Side of RLHF: On-Policy Feedback for Reward Model Self-Supervised Improvement arXiv:2605.30888v1 Announce Type: new Abstract: Building strong reward models (RMs) for language model alignment is bottlenecked by the cost and difficulty of acquiring diverse and reliable preference data from human annotation or judge models. It is dramatically worse as the policy evolves beyond the static RM training. Therefore, we propose SAVE (Self-supervised reward model improvement via Value-Anchored O