cs.AI updates on arXiv.org 10月09日
动态评估标准提升LLM开放问答能力
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本文提出一种名为Online Rubrics Elicitation的动态评估标准方法,通过实时比较当前和参考策略的响应,以动态调整评估标准,有效提升LLM在开放问答任务中的表现。

arXiv:2510.07284v1 Announce Type: cross Abstract: Rubrics provide a flexible way to train LLMs on open-ended long-form answers where verifiable rewards are not applicable and human preferences provide coarse signals. Prior work shows that reinforcement learning with rubric-based rewards leads to consistent gains in LLM post-training. Most existing approaches rely on rubrics that remain static over the course of training. Such static rubrics, however, are vulnerable to reward-hacking type behaviors and fail to capture emergent desiderata that arise during training. We introduce Online Rubrics Elicitation (OnlineRubrics), a method that dynamically curates evaluation criteria in an online manner through pairwise comparisons of responses from current and reference policies. This online process enables continuous identification and mitigation of errors as training proceeds. Empirically, this approach yields consistent improvements of up to 8% over training exclusively with static rubrics across AlpacaEval, GPQA, ArenaHard as well as the validation sets of expert questions and rubrics. We qualitatively analyze the elicited criteria and identify prominent themes such as transparency, practicality, organization, and reasoning.

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LLM 动态评估 开放问答 Rubrics 训练方法
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