Training Deep Neural Networks on Noisy Labels with Bootstrapping
University of Michigan–Ann Arbor · Ann Arbor Center for Independent Living · +2 more institutions
Abstract
Current state-of-the-art deep learning systems for visual object recognition and detection use purely supervised training with regularization such as dropout to avoid overfitting. The performance depends critically on the amount of labeled examples, and in current practice the labels are assumed to be unambiguous and accurate. However, this assumption often does not hold; e.g. in recognition, class labels may be missing; in detection, objects in the image may not be localized; and in general, the labeling may be subjective. In this work we propose a generic way to handle noisy and incomplete labeling by augmenting the prediction objective with a notion of consistency. We consider a prediction consistent if the…
Citation impact
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- References
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Authors
6- SRScott ReedCorresponding
University of Michigan–Ann Arbor, Ann Arbor Center for Independent Living
- HLHonglak Lee
University of Michigan–Ann Arbor, Ann Arbor Center for Independent Living
- DADragomir Anguelov
Google (United States)
- CSChristian Szegedy
Google (United States)
- DEDumitru Erhan
Microsoft (United States)
Topics & keywords
- Bootstrapping (finance)
- Training (meteorology)
- Computer science
- Deep neural networks
- Artificial intelligence
- Artificial neural network
- Machine learning
- Econometrics
- Peace, Justice and strong institutions