Normalizing Flows (NF) are powerful likelihood-based generative models that are able to trade off between expressivity and tractability to model complex densities. A now well established research avenue leverages optimal transport (OT) and looks for Monge maps, i.e. models with minimal effort between the source and target distributions. This paper introduces a method based on Brenier's polar factorization theorem to transform any trained NF into a more OT-efficient version without changing the final density. We do so by learning a rearrangement of the source (Gaussian) distribution that minimizes the OT cost between the source and the final density. We further constrain the path leading to the estimated Monge map to lie on a geodesic in the space of volume-preserving diffeomorphisms thanks to Euler's equations. The proposed method leads to smooth flows with reduced OT cost for several existing models without affecting the model performance.
翻译:正常化流程(NF)是强大的基于可能性的基因化模型,能够将显性与可移动性进行交换,以模拟复杂的密度。一个现已成熟的研究渠道利用最佳运输手段(OT)并寻找蒙古地图,即源和目标分布之间最小努力的模型。本文采用了基于Brenier的极分因子化理论的方法,将任何经过训练的NF转换成一种更具有OT效率的版本,而不改变最终密度。我们这样做的方法是学习对源(Gausian)的分布进行重新排列,以尽量减少源与最后密度之间的OT成本。我们进一步限制通向估计的蒙古地图的道路,即由于Euler的方程式,在保持体积保持二变形的空间进行大地测量。拟议方法可以在不影响模型性能的情况下,使若干现有模型的OT成本降低,从而平稳流动。