Robust Learning by Self-Transition for Handling Noisy Labels

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Real-world data inevitably contains noisy labels, which induce the poor generalization of deep neural networks. It is known that the network typically begins to rapidly memorize false-labeled samples after a certain point of training. Thus, to counter the label noise challenge, we propose a novel self-transitional learning method called MORPH, which automatically switches its learning phase at the transition point from seeding to evolution. In the seeding phase, the network is updated using all the samples to collect a seed of clean samples. Then, in the evolution phase, the network is updated using only the set of arguably clean samples, which precisely keeps expanding by the updated network. Thus, MORPH effectively avoids the overfitting to false-labeled samples throughout the entire training period. Extensive experiments using five real-world or synthetic benchmark datasets demonstrate substantial improvements over state-of-the-art methods in terms of robustness and efficiency. © 2021 ACM.
Publisher
Association for Computing Machinery
Issue Date
2021-08-18
Language
English
Citation

27th ACM SIGKDD Conference on Knowledge Discovery and Data Mining, KDD 2021, pp.1490 - 1500

DOI
10.1145/3447548.3467222
URI
http://hdl.handle.net/10203/288767
Appears in Collection
CS-Conference Papers(학술회의논문)
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