基于受控向量场的参数高效生成模型 / Parameter-Efficient Generative Modeling with Controlled Vector Fields
1️⃣ 一句话总结
本文提出了一种新的生成模型方法,通过仅学习少量标量控制函数来调控一组固定的向量场,从而构建出可以高效生成复杂数据分布的连续时间流模型,大幅减少了需要学习的参数数量,并保持了模型的表达能力和可解释性。
We introduce a continuous-time generative modeling framework, motivated by the Chow-Rashevskii theorem, that builds expressive flows from a small set of fixed vector fields and learned scalar controls. Instead of learning an unconstrained high-dimensional vector field, our framework constructs the velocity by modulating fixed vector fields with learned scalar control functions. When the fixed fields are bracket-generating, their Lie algebra spans the ambient space, providing a mechanism for expressive transport with only a small number of learned control channels and offering a parameter-efficient geometric alternative to standard vector-field parameterizations. This decoupled formulation yields a structured and interpretable generative model in which the number of learned scalar output channels can be chosen independently of the ambient dimension. We formulate an expressivity principle showing that, under suitable controllability and well-posedness assumptions, such controlled flows can transport a source distribution to a target distribution. We train the resulting model using a continuous-normalizing-flow likelihood objective and present proof-of-concept experiments on synthetic distributions.
基于受控向量场的参数高效生成模型 / Parameter-Efficient Generative Modeling with Controlled Vector Fields
本文提出了一种新的生成模型方法,通过仅学习少量标量控制函数来调控一组固定的向量场,从而构建出可以高效生成复杂数据分布的连续时间流模型,大幅减少了需要学习的参数数量,并保持了模型的表达能力和可解释性。
源自 arXiv: 2605.28267