AI RESEARCH

Metacognition as Reward: Reinforcing LLM Reasoning via Knowledge and Regulation Signals

arXiv CS.AI

ArXi:2605.23384v1 Announce Type: cross Recent RL methods have substantially improved the reasoning abilities of LLMs. Existing reward designs mainly follow two paradigms: (1) Reinforcement learning with verifiable rewards (RLVR) derives outcome signals from executable checks or ground-truth answers, but provides limited guidance for intermediate reasoning behaviors. (2) Rubrics-as-reward (RaR) goes beyond final-answer checking by using natural-language rubrics to assess reasoning quality and task compliance, but often requires instance-specific rubrics and substantial design effort.