AI RESEARCH

The Exploration of Error Bounds in Classification with Noisy Labels

arXiv CS.LG

ArXi:2501.15163v3 Announce Type: replace Numerous studies have shown that label noise can lead to poor generalization performance, negatively affecting classification accuracy. Therefore, understanding the effectiveness of classifiers trained using deep neural networks in the presence of noisy labels is of considerable practical significance. In this paper, we focus on the error bounds of excess risks for classification problems with noisy labels within deep learning frameworks. We derive error bounds for the excess risk, decomposing it into statistical error and approximation error.