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Learning with Noisy Labels Revisited: A Study Using Real-World Human Annotations
[article]
2022
arXiv
pre-print
Existing research on learning with noisy labels mainly focuses on synthetic label noise. Synthetic noise, though has clean structures which greatly enabled statistical analyses, often fails to model real-world noise patterns. The recent literature has observed several efforts to offer real-world noisy datasets, yet the existing efforts suffer from two caveats: (1) The lack of ground-truth verification makes it hard to theoretically study the property and treatment of real-world label noise; (2)
arXiv:2110.12088v2
fatcat:q57onvwrcbggzk5jwbzum7m7je