TY - GEN
T1 - DogFit
T2 - 40th AAAI Conference on Artificial Intelligence, AAAI 2026
AU - Bahram, Yara
AU - Shateri, Mohammadhadi
AU - Granger, Eric
N1 - Publisher Copyright:
© 2026, Association for the Advancement of Artificial Intelligence. All rights reserved.
PY - 2026
Y1 - 2026
N2 - 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.
AB - 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.
UR - https://www.scopus.com/pages/publications/105035026752
U2 - 10.1609/aaai.v40i4.37219
DO - 10.1609/aaai.v40i4.37219
M3 - Contribution to conference proceedings
AN - SCOPUS:105035026752
SN - 9781577359067
SN - 9781577359067
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SN - 9781577359067
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SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
SN - 9781577359067
T3 - Proceedings of the AAAI Conference on Artificial Intelligence
SP - 2345
EP - 2353
BT - Proceedings of the AAAI Conference on Artificial Intelligence
A2 - Koenig, Sven
A2 - Jenkins, Chad
A2 - Taylor, Matthew E.
PB - Association for the Advancement of Artificial Intelligence
Y2 - 20 January 2026 through 27 January 2026
ER -