cs.AI updates on arXiv.org 09月30日
GLASS Flows:提升流匹配和扩散模型效率
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本文提出GLASS Flows,一种新的采样范式,通过模拟“流匹配模型内的流匹配模型”来采样马尔可夫转移,解决现有算法依赖的低效SDE采样问题,结合ODE和SDE的优势,提升流匹配和扩散模型的效率。

arXiv:2509.25170v1 Announce Type: cross Abstract: The performance of flow matching and diffusion models can be greatly improved at inference time using reward alignment algorithms, yet efficiency remains a major limitation. While several algorithms were proposed, we demonstrate that a common bottleneck is the sampling method these algorithms rely on: many algorithms require to sample Markov transitions via SDE sampling, which is significantly less efficient and often less performant than ODE sampling. To remove this bottleneck, we introduce GLASS Flows, a new sampling paradigm that simulates a "flow matching model within a flow matching model" to sample Markov transitions. As we show in this work, this "inner" flow matching model can be retrieved from a pre-trained model without any re-training, combining the efficiency of ODEs with the stochastic evolution of SDEs. On large-scale text-to-image models, we show that GLASS Flows eliminate the trade-off between stochastic evolution and efficiency. Combined with Feynman-Kac Steering, GLASS Flows improve state-of-the-art performance in text-to-image generation, making it a simple, drop-in solution for inference-time scaling of flow and diffusion models.

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GLASS Flows 流匹配模型 扩散模型 采样方法 效率提升
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