Threshold-Guided Optimization for Visual Generative Models

📅 2026-05-06
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📝 Abstract
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. We propose a threshold-guided alignment framework that replaces this oracle baseline with a data-driven global threshold estimated from empirical score statistics. This formulation turns alignment into a binary decision task on unpaired data, enabling effective optimization directly from scalar feedback. We also incorporate a confidence weighting term to emphasize samples whose scores deviate strongly from the threshold, improving sample efficiency. Experiments across both diffusion and masked generative paradigms, spanning three test sets and five reward models, show that our method consistently improves preference alignment over previous methods. These results position our threshold-guided framework as a simple yet principled alternative for aligning visual generative models without paired comparisons.
Problem

Research questions and friction points this paper is trying to address.

visual generative models
human feedback alignment
scalar ratings
preference optimization
unpaired data
Innovation

Methods, ideas, or system contributions that make the work stand out.

threshold-guided alignment
scalar feedback
KL-regularized optimization
binary decision task
confidence weighting
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