This paper focuses on computing the convex conjugate operation that arises when solving Euclidean Wasserstein-2 optimal transport problems. This conjugation, which is also referred to as the Legendre-Fenchel conjugate or c-transform,is considered difficult to compute and in practice,Wasserstein-2 methods are limited by not being able to exactly conjugate the dual potentials in continuous space. To overcome this, the computation of the conjugate can be approximated with amortized optimization, which learns a model to predict the conjugate. I show that combining amortized approximations to the conjugate with a solver for fine-tuning significantly improves the quality of transport maps learned for the Wasserstein-2 benchmark by Korotin et al. (2021a) and is able to model many 2-dimensional couplings and flows considered in the literature. All of the baselines, methods, and solvers in this paper are available at http://github.com/facebookresearch/w2ot.
翻译:本文侧重于计算在解决厄克林底安·瓦西斯坦-2最佳运输问题时产生的二次曲线共振操作。这种共振(也称为Tulture-Fenchel conjugate或c-transform)被认为是难以计算,在实践中,Wasserstein-2方法受到限制,因为无法精确地将连续空间的双重潜力混为一体。要克服这一点,共振计算方法可以与摊销优化相近,它学习了预测共振的模型。我显示,将摊销近似和微调的解解解器相结合,大大提高了Korotin等人(2021a)为瓦西斯坦-2基准所学的运输图的质量,并且能够模拟文献中考虑的许多二维联动和流动。本文中的所有基线、方法和解决方案都可以在http://github.com/facebookresearch/w2ot上查阅。</s>