AI RESEARCH
ARES: Automated Rubric Synthesis for Scalable LLM Reinforcement Learning
arXiv CS.CL
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ArXi:2605.23454v1 Announce Type: new Rubric-based rewards offer a promising way to extend reinforcement learning (RL) for large language models beyond tasks with automatically verifiable answers. However, scaling rubric-based RL remains challenging: existing approaches often rely on expert-written rubrics and manually constructed question sets, while fixed task-level rubrics may fail to capture the evaluation requirements of individual questions. We propose ARES (Automated Rubric synthEsis for Scalable RL), a framework for automatically constructing rubric-based RL data at scale.