2024
DOI: 10.1609/aaai.v38i15.29626
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Learning with Noisy Labels Using Hyperspherical Margin Weighting

Shuo Zhang,
Yuwen Li,
Zhongyu Wang
et al.

Abstract: Datasets often include noisy labels, but learning from them is difficult. Since mislabeled examples usually have larger loss values in training, the small-loss trick is regarded as a standard metric to identify the clean example from the training set for better performance. Nonetheless, this proposal ignores that some clean but hard-to-learn examples also generate large losses. They could be misidentified by this criterion. In this paper, we propose a new metric called the Integrated Area Margin (IAM), which i… Show more

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