Symmetric Cross Entropy for Robust Learning With Noisy Labels
Shanghai Jiao Tong University · University of Melbourne · +1 more institution
Abstract
Training accurate deep neural networks (DNNs) in the presence of noisy labels is an important and challenging task. Though a number of approaches have been proposed for learning with noisy labels, many open issues remain. In this paper, we show that DNN learning with Cross Entropy (CE) exhibits overfitting to noisy labels on some classes ("easy" classes), but more surprisingly, it also suffers from significant under learning on some other classes ("hard" classes). Intuitively, CE requires an extra term to facilitate learning of hard classes, and more importantly, this term should be noise tolerant, so as to avoid overfitting to noisy labels. Inspired by the symmetric KL-divergence, we propose the approach of…
Citation impact
- FWCI
- 48.31
- Percentile
- 100%
- References
- 54
Authors
6Topics & keywords
- Overfitting
- Computer science
- Boosting (machine learning)
- Artificial intelligence
- Cross entropy
- Machine learning
- Entropy (arrow of time)
- Benchmark (surveying)