Weakly Supervised AUC Optimization: A Unified Partial AUC Approach
Abstract
Since acquiring perfect supervision is usually difficult, real-world machine learning tasks often confront inaccurate, incomplete, or inexact supervision, collectively referred to as weak supervision. In this work, we present WSAUC, a unified framework for weakly supervised AUC optimization problems, which covers noisy label learning, positive-unlabeled learning, multi-instance learning, and semi-supervised learning scenarios. Within the WSAUC framework, we first frame the AUC optimization problems in various weakly supervised scenarios as a common formulation of minimizing the AUC risk on contaminated sets, and demonstrate that the empirical risk minimization problems are consistent with the true AUC. Then, we introduce a new type of partial AUC, specifically, the reversed partial AUC (rpAUC), which serves as a robust training objective for AUC maximization in the presence of contaminated labels. WSAUC offers a universal solution for AUC optimization in various weakly supervised scenarios by maximizing the empirical rpAUC. Theoretical and experimental results under multiple settings support the effectiveness of WSAUC on a range of weakly supervised AUC optimization tasks.
Cite
@article{arxiv.2305.14258,
title = {Weakly Supervised AUC Optimization: A Unified Partial AUC Approach},
author = {Zheng Xie and Yu Liu and Hao-Yuan He and Ming Li and Zhi-Hua Zhou},
journal= {arXiv preprint arXiv:2305.14258},
year = {2024}
}
Comments
Accepted by IEEE TPAMI