DPOT: A DeepParticle method for Computation of Optimal Transport with convergence guarantee
Published: Jun 29, 2025
Last Updated: Jun 29, 2025
Authors:Yingyuan Li, Aokun Wang, Zhongjian Wang
Abstract
In this work, we propose a novel machine learning approach to compute the optimal transport map between two continuous distributions from their unpaired samples, based on the DeepParticle methods. The proposed method leads to a min-min optimization during training and does not impose any restriction on the network structure. Theoretically we establish a weak convergence guarantee and a quantitative error bound between the learned map and the optimal transport map. Our numerical experiments validate the theoretical results and the effectiveness of the new approach, particularly on real-world tasks.