Optimal Transport
Optimal transport (OT) is a mathematical framework for efficiently moving probability distributions from one configuration to another while minimizing a cost function, often visualized as the "earth mover's distance." Current research focuses on developing robust and scalable OT algorithms, particularly for high-dimensional data and applications involving noisy or unbalanced distributions, often employing neural networks and Sinkhorn iterations. These advancements are significantly impacting diverse fields, including machine learning (e.g., generative modeling, domain adaptation), image processing, and even economic modeling, by providing powerful tools for data analysis, representation learning, and fair data manipulation.
Papers
Debias Coarsely, Sample Conditionally: Statistical Downscaling through Optimal Transport and Probabilistic Diffusion Models
Zhong Yi Wan, Ricardo Baptista, Yi-fan Chen, John Anderson, Anudhyan Boral, Fei Sha, Leonardo Zepeda-Núñez
Generative Modeling through the Semi-dual Formulation of Unbalanced Optimal Transport
Jaemoo Choi, Jaewoong Choi, Myungjoo Kang
CMOT: Cross-modal Mixup via Optimal Transport for Speech Translation
Yan Zhou, Qingkai Fang, Yang Feng