AI RESEARCH

CAMEL: Confidence-Gated Reflection for Reward Modeling

arXiv CS.CL

ArXi:2602.20670v2 Announce Type: replace Reward models play a fundamental role in aligning large language models with human preferences. Existing methods predominantly follow two paradigms: scalar discriminative preference models, which are efficient but lack interpretability, and generative judging models, which offer richer reasoning at the cost of higher computational overhead. We observe that the log-probability margin between verdict tokens strongly correlates with prediction correctness, providing a reliable proxy for instance difficulty without additional inference cost.