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Improved techniques for fine-tuning flow models via adjoint matching: a deterministic control pipeline

2026-05-07 17:12:47
Zhengyi Guo, Jiayuan Sheng, David D. Yao, Wenpin Tang

Abstract

We propose a deterministic adjoint matching framework that formulates human preference alignment for flow-based generative models as an optimal control problem over velocity fields. One can directly regress the control toward a value-gradient-induced target under the current policy, leading to a simple and stable training objective. Building on this perspective, we introduce a truncated adjoint scheme that focuses computation on the terminal portion of the trajectory, where reward-relevant signals concentrate, which yields substantial computational savings while preserving alignment quality. We further generalize the framework beyond standard KL-based regularization, allowing more flexible trade-offs between alignment strength and distributional preservation. Experiments on SiT-XL/2 and FLUX.2-Klein-4B demonstrate consistent gains across multiple alignment metrics, along with substantially improved diversity and mode preservation.

Abstract (translated)

URL

https://arxiv.org/abs/2605.06583

PDF

https://arxiv.org/pdf/2605.06583.pdf


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