Monge map refers to the optimal transport map between two probability distributions and provides a principled approach to transform one distribution to another. Neural network based optimal transport map solver has gained great attention in recent years. Along this line, we present a scalable algorithm for computing the neural Monge map between two probability distributions. Our algorithm is based on a weak form of the optimal transport problem, thus it only requires samples from the marginals instead of their analytic expressions, and can accommodate optimal transport between two distributions with different dimensions. Our algorithm is suitable for general cost functions, compared with other existing methods for estimating Monge maps usin...
We study the entropic regularization of the optimal transport problem in dimension 1 when the cost f...
Optimal transport (OT) theory describes general principles to define and select, among many possible...
Normalizing Flows (NF) are powerful likelihood-based generative models that are able to trade off be...
15 pages, 4 figures. To appear in the Proceedings of the International Conference on Learning Repres...
International audienceOptimal transport (OT) provides effective tools for comparing and mapping prob...
Optimal transport (OT) provides effective tools for comparing and mapping probability measures. We p...
This paper introduces the first statistically consistent estimator of the optimal transport map betw...
Abstract. We prove that the optimal transportation mapping that takes a Gaussian measure γ on an inf...
National audienceNormalization flows are generic and powerful tools for probabilistic modeling and d...
Over the past few years, optimal transport has gained popularity in machine learning as a way to com...
The objective in statistical Optimal Transport (OT) is to consistently estimate the optimal transpor...
Neurips 2021 Optimal Transport and Machine Learning WorkshopOptimal transport distances (OT) have be...
It was recently shown that under smoothness conditions, the squared Wasserstein distance between two...
This thesis proposes theoretical and numerical contributions to use Entropy-regularized Optimal Tran...
The Optimal Transport theory not only defines a notion of distance between probability measures, but...
We study the entropic regularization of the optimal transport problem in dimension 1 when the cost f...
Optimal transport (OT) theory describes general principles to define and select, among many possible...
Normalizing Flows (NF) are powerful likelihood-based generative models that are able to trade off be...
15 pages, 4 figures. To appear in the Proceedings of the International Conference on Learning Repres...
International audienceOptimal transport (OT) provides effective tools for comparing and mapping prob...
Optimal transport (OT) provides effective tools for comparing and mapping probability measures. We p...
This paper introduces the first statistically consistent estimator of the optimal transport map betw...
Abstract. We prove that the optimal transportation mapping that takes a Gaussian measure γ on an inf...
National audienceNormalization flows are generic and powerful tools for probabilistic modeling and d...
Over the past few years, optimal transport has gained popularity in machine learning as a way to com...
The objective in statistical Optimal Transport (OT) is to consistently estimate the optimal transpor...
Neurips 2021 Optimal Transport and Machine Learning WorkshopOptimal transport distances (OT) have be...
It was recently shown that under smoothness conditions, the squared Wasserstein distance between two...
This thesis proposes theoretical and numerical contributions to use Entropy-regularized Optimal Tran...
The Optimal Transport theory not only defines a notion of distance between probability measures, but...
We study the entropic regularization of the optimal transport problem in dimension 1 when the cost f...
Optimal transport (OT) theory describes general principles to define and select, among many possible...
Normalizing Flows (NF) are powerful likelihood-based generative models that are able to trade off be...