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arXiv 提交日期: 2026-02-11
📄 Abstract - CMAD: Cooperative Multi-Agent Diffusion via Stochastic Optimal Control

Continuous-time generative models have achieved remarkable success in image restoration and synthesis. However, controlling the composition of multiple pre-trained models remains an open challenge. Current approaches largely treat composition as an algebraic composition of probability densities, such as via products or mixtures of experts. This perspective assumes the target distribution is known explicitly, which is almost never the case. In this work, we propose a different paradigm that formulates compositional generation as a cooperative Stochastic Optimal Control problem. Rather than combining probability densities, we treat pre-trained diffusion models as interacting agents whose diffusion trajectories are jointly steered, via optimal control, toward a shared objective defined on their aggregated output. We validate our framework on conditional MNIST generation and compare it against a naive inference-time DPS-style baseline replacing learned cooperative control with per-step gradient guidance.

顶级标签: multi-agents model training theory
详细标签: stochastic optimal control diffusion models compositional generation cooperative agents generative modeling 或 搜索:

CMAD:基于随机最优控制的协同多智能体扩散模型 / CMAD: Cooperative Multi-Agent Diffusion via Stochastic Optimal Control


1️⃣ 一句话总结

这篇论文提出了一种新方法,将多个预训练扩散模型的组合生成问题,看作是一个需要协同合作的随机最优控制问题,让这些模型像智能体一样共同调整生成路径,以实现一个统一的生成目标,而不是简单地将它们的概率分布进行数学组合。

源自 arXiv: 2602.10933