AI RESEARCH

Efficiently Aligning Language Models with Online Natural Language Feedback

arXiv CS.AI

ArXi:2605.04356v1 Announce Type: cross Reinforcement learning with verifiable rewards has been used to elicit impressive performance from language models in many domains. But, broadly beneficial deployments of AI may require us to train models with strong capabilities in "fuzzy", hard-to-supervise domains. In this paper, we develop methods to align language models in fuzzy domains where human experts are still able to provide high-quality supervision signal, but only for a small number of model outputs, using online natural language feedback.