AI RESEARCH

Threshold-Guided Optimization for Visual Generative Models

arXiv CS.LG

ArXi:2605.04653v1 Announce Type: new Aligning large visual generative models with human feedback is often performed through pairwise preference optimization. While such approaches are conceptually simple, they fundamentally rely on annotated pairs, limiting scalability in settings where feedback is collected as independent scalar ratings. In this work, we revisit the KL-regularized alignment objective and show that the optimal policy implicitly compares each sample's reward to an instance-specific baseline that is generally intractable.