NCSAM Noise-Compensated Sharpness-Aware Minimization for Noisy Label Learning
NCSAM: 噪声补偿的锐度感知最小化用于噪声标签学习
发表机构 * Beijing University of Technology(北京理工大学)
AI总结 提出NCSAM方法,通过噪声补偿扰动修正噪声标签引起的优化偏差,缓解对噪声标签的记忆,在合成和真实噪声标签基准上优于SAM基线。
Comments 11 pages, 1 figure, 8 tables. Major revision of v1: revised PAC-Bayesian theoretical analysis, clarified the NCSAM formulation, added appendix derivations, reorganized experiments and ablations, updated related work, citations, writing, and author list