NeurIPS2023

Bringing regularized optimal transport to lightspeed: a splitting method adapted for GPUs

Jacob Lindbäck, Zesen Wang, Mikael Johansson

被引用 3 次

摘要

We present an efficient algorithm for regularized optimal transport. In contrast to previous methods, we use the Douglas-Rachford splitting technique to develop an efficient solver that can handle a broad class of regularizers. The algorithm has strong global convergence guarantees, low per-iteration cost, and can exploit GPU parallelization, making it considerably faster than the state-of-the-art for many problems. We illustrate its competitiveness in several applications, including domain adaptation and learning of generative models. Preprint. Under review.