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Main Authors: Chen, Weiyan, Deng, Weijian, Xiao, Yao, Tu, Weijie, Dong, ZiYi, Radwan, Ibrahim, Lin, Liang, Wei, Pengxu
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.19839
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author Chen, Weiyan
Deng, Weijian
Xiao, Yao
Tu, Weijie
Dong, ZiYi
Radwan, Ibrahim
Lin, Liang
Wei, Pengxu
author_facet Chen, Weiyan
Deng, Weijian
Xiao, Yao
Tu, Weijie
Dong, ZiYi
Radwan, Ibrahim
Lin, Liang
Wei, Pengxu
contents 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. We adopt a data-centric perspective and study a curation strategy that treats real images as reference points and constructs preference signals by contrasting them with generated or perturbed samples, without requiring manually annotated preference pairs. Through empirical analysis, we show that real-data-based supervision provides effective guidance for aligning diffusion models and achieves performance comparable to existing preference-based methods. Our results suggest that real data offers a practical and complementary source of supervision for preference alignment and highlight directions of label-efficient alignment strategies. Code and models are available at https://cwyxx.github.io/RealAlign.
format Preprint
id arxiv_https___arxiv_org_abs_2605_19839
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle When Preference Labels Fall Short: Aligning Diffusion Models from Real Data
Chen, Weiyan
Deng, Weijian
Xiao, Yao
Tu, Weijie
Dong, ZiYi
Radwan, Ibrahim
Lin, Liang
Wei, Pengxu
Computer Vision and Pattern Recognition
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. We adopt a data-centric perspective and study a curation strategy that treats real images as reference points and constructs preference signals by contrasting them with generated or perturbed samples, without requiring manually annotated preference pairs. Through empirical analysis, we show that real-data-based supervision provides effective guidance for aligning diffusion models and achieves performance comparable to existing preference-based methods. Our results suggest that real data offers a practical and complementary source of supervision for preference alignment and highlight directions of label-efficient alignment strategies. Code and models are available at https://cwyxx.github.io/RealAlign.
title When Preference Labels Fall Short: Aligning Diffusion Models from Real Data
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.19839