NoiseGPT: Label Noise Detection and Rectification through Probability Curvature
–Neural Information Processing Systems
Machine learning craves high-quality data which is a major bottleneck during realistic deployment, as it takes abundant resources and massive human labor to collect and label data. Unfortunately, label noise where image data mismatches with incorrect label exists ubiquitously in all kinds of datasets, significantly degrading the learning performance of deep networks. Learning with Label Noise (LNL) has been a common strategy for mitigating the influence of noisy labels.
Neural Information Processing Systems
Oct-10-2025, 18:26:00 GMT
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