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DogFit: Domain-guided Fine-tuning for Efficient Transfer Learning of Diffusion Models

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Résumé

Transfer learning of diffusion models to new domains with limited data is challenging, as naively fine-tuning the model often results in poor generalization. Test-time guidance methods help mitigate this by offering controllable improvements in image fidelity through a trade-off with sample diversity. However, this benefit comes at a high computational cost, typically requiring dual forward passes during sampling. We propose the Domain-guided Fine-tuning (DogFit) method, an effective guidance mechanism for diffusion transfer learning that maintains controllability without incurring additional computational overhead. DogFit injects a domain-aware guidance offset into the training loss, effectively internalizing the guided behavior during the fine-tuning process. The domain-aware design is motivated by our observation that during fine-tuning, the unconditional source model offers a stronger marginal estimate than the target model. To support efficient controllable fidelity–diversity trade-offs at inference, we encode the guidance strength value as an additional model input through a lightweight conditioning mechanism. We further investigate the optimal placement and timing of the guidance offset during training and propose two simple scheduling strategies, i.e., late-start and cut-off, which improve generation quality and training stability. Experiments on DiT and SiT backbones across six diverse target domains show that DogFit can outperform state-of-the-art guidance methods in transfer learning in terms of FID and FDDINOV2 while requiring up to ∼ ×2 fewer sampling TFLOPS.

langue originaleAnglais
titreProceedings of the AAAI Conference on Artificial Intelligence
rédacteurs en chefSven Koenig, Chad Jenkins, Matthew E. Taylor
EditeurAssociation for the Advancement of Artificial Intelligence
Pages2345-2353
Nombre de pages9
Edition4
ISBN (imprimé)9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067, 9781577359067
Les DOIs
étatPublié - 2026
Evénement40th AAAI Conference on Artificial Intelligence, AAAI 2026 - Singapore, Singapour
Durée: 20 janv. 202627 janv. 2026

Série de publications

NomProceedings of the AAAI Conference on Artificial Intelligence
nombre4
Volume40
ISSN (imprimé)2159-5399
ISSN (Electronique)2374-3468

Conférence

Conférence40th AAAI Conference on Artificial Intelligence, AAAI 2026
Pays/TerritoireSingapour
La villeSingapore
période20/01/2627/01/26

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