AI RESEARCH

Efficient Exploration for Iterative Nash Preference Optimization

arXiv CS.AI

ArXi:2606.01382v1 Announce Type: cross Preference alignment is central to improving large language models, but standard reward-based formulations can be restrictive when human preferences are cyclic, non-transitive, or otherwise not representable by a scalar reward. Nash Learning from Human Feedback (NLHF) addresses this limitation by modeling alignment as a preference game and targeting a Nash equilibrium rather than a reward maximizer. However, the learning-theoretic foundations of scalable NLHF remain limited.