AI RESEARCH
When Preference Labels Fall Short: Aligning Diffusion Models from Real Data
arXiv CS.CV
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ArXi:2605.19839v1 Announce Type: new Preference alignment aims to guide generative models by learning from comparisons between preferred and non-preferred samples. In practice, most existing approaches rely on preference pairs constructed from model-generated images. Such supervision is inherently relative and can be ambiguous when both samples exhibit artifacts or limited visual quality, making it difficult to infer what constitutes a truly desirable output. In this work, we investigate whether real data can serve as an alternative source of supervision for preference alignment.