Double-Bounded Optimal Transport for Advanced Clustering and Classification

Authors

  • Liangliang Shi Shanghai Jiao Tong University
  • Zhaoqi Shen Shanghai Jiao Tong University
  • Junchi Yan Shanghai Jiao Tong University

DOI:

https://doi.org/10.1609/aaai.v38i13.29419

Keywords:

ML: Classification and Regression, ML: Clustering

Abstract

Optimal transport (OT) is attracting increasing attention in machine learning. It aims to transport a source distribution to a target one at minimal cost. In its vanilla form, the source and target distributions are predetermined, which contracts to the real-world case involving undetermined targets. In this paper, we propose Doubly Bounded Optimal Transport (DB-OT), which assumes that the target distribution is restricted within two boundaries instead of a fixed one, thus giving more freedom for the transport to find solutions. Based on the entropic regularization of DB-OT, three scaling-based algorithms are devised for calculating the optimal solution. We also show that our DB-OT is helpful for barycenter-based clustering, which can avoid the excessive concentration of samples in a single cluster. Then we further develop DB-OT techniques for long-tailed classification which is an emerging and open problem. We first propose a connection between OT and classification, that is, in the classification task, training involves optimizing the Inverse OT to learn the representations, while testing involves optimizing the OT for predictions. with this OT perspective, we first apply DB-OT to improve the loss, and the Balanced Softmax is shown as a special case. Then we apply DB-OT for inference in the testing process. Even with vanilla Softmax trained features, our experiments show that our method can achieve good results with our improved inference scheme in the testing stage.

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Published

2024-03-24

How to Cite

Shi, L., Shen, Z., & Yan, J. (2024). Double-Bounded Optimal Transport for Advanced Clustering and Classification. Proceedings of the AAAI Conference on Artificial Intelligence, 38(13), 14982-14990. https://doi.org/10.1609/aaai.v38i13.29419

Issue

Section

AAAI Technical Track on Machine Learning IV