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Hauptverfasser: Dong, Linwei, Guo, Ruoyu, Bai, Ge, Yuan, Zehuan, Luo, Yawei, Zou, Changqing
Format: Preprint
Veröffentlicht: 2026
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2604.19009
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author Dong, Linwei
Guo, Ruoyu
Bai, Ge
Yuan, Zehuan
Luo, Yawei
Zou, Changqing
author_facet Dong, Linwei
Guo, Ruoyu
Bai, Ge
Yuan, Zehuan
Luo, Yawei
Zou, Changqing
contents Diffusion distillation, exemplified by Distribution Matching Distillation (DMD), has shown great promise in few-step generation but often sacrifices quality for sampling speed. While integrating Reinforcement Learning (RL) into distillation offers potential, a naive fusion of these two objectives relies on suboptimal raw sample evaluation. This sample-based scoring creates inherent conflicts with the distillation trajectory and produces unreliable rewards due to the noisy nature of early-stage generation. To overcome these limitations, we propose GDMD, a novel framework that redefines the reward mechanism by prioritizing distillation gradients over raw pixel outputs as the primary signal for optimization. By reinterpreting the DMD gradients as implicit target tensors, our framework enables existing reward models to directly evaluate the quality of distillation updates. This gradient-level guidance functions as an adaptive weighting that synchronizes the RL policy with the distillation objective, effectively neutralizing optimization divergence. Empirical results show that GDMD sets a new SOTA for few-step generation. Specifically, our 4-step models outperform the quality of their multi-step teacher and substantially exceed previous DMDR results in GenEval and human-preference metrics, exhibiting strong scalability potential.
format Preprint
id arxiv_https___arxiv_org_abs_2604_19009
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Guiding Distribution Matching Distillation with Gradient-Based Reinforcement Learning
Dong, Linwei
Guo, Ruoyu
Bai, Ge
Yuan, Zehuan
Luo, Yawei
Zou, Changqing
Machine Learning
Computer Vision and Pattern Recognition
Diffusion distillation, exemplified by Distribution Matching Distillation (DMD), has shown great promise in few-step generation but often sacrifices quality for sampling speed. While integrating Reinforcement Learning (RL) into distillation offers potential, a naive fusion of these two objectives relies on suboptimal raw sample evaluation. This sample-based scoring creates inherent conflicts with the distillation trajectory and produces unreliable rewards due to the noisy nature of early-stage generation. To overcome these limitations, we propose GDMD, a novel framework that redefines the reward mechanism by prioritizing distillation gradients over raw pixel outputs as the primary signal for optimization. By reinterpreting the DMD gradients as implicit target tensors, our framework enables existing reward models to directly evaluate the quality of distillation updates. This gradient-level guidance functions as an adaptive weighting that synchronizes the RL policy with the distillation objective, effectively neutralizing optimization divergence. Empirical results show that GDMD sets a new SOTA for few-step generation. Specifically, our 4-step models outperform the quality of their multi-step teacher and substantially exceed previous DMDR results in GenEval and human-preference metrics, exhibiting strong scalability potential.
title Guiding Distribution Matching Distillation with Gradient-Based Reinforcement Learning
topic Machine Learning
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.19009