Abstract
Deep neural networks excel at learning the training data, but often provide incorrect and confident predictions when evaluated on slightly different test examples. This includes distribution shifts, outliers, and adversarial examples. To address these issues, we propose Manifold Mixup, a simple regularizer that encourages neural networks to predict less confidently on interpolations of hidden representations. Manifold Mixup leverages semantic interpolations as additional training signal, obtaining neural networks with smoother decision boundaries at multiple levels of representation. As a result, neural networks trained with Manifold Mixup learn class-representations with fewer directions of variance. We prove theory on why this flattening happens under ideal conditions, validate it on practical situations, and connect it to previous works on information theory and generalization. In spite of incurring no significant computation and being implemented in a few lines of code, Manifold Mixup improves strong baselines in supervised learning, robustness to single-step adversarial attacks, and test log-likelihood.
Original language | English |
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Title of host publication | Proceedings of the 36th International Conference on Machine Learning |
Publisher | JMLR |
Publication status | Published - 2019 |
MoE publication type | A4 Conference publication |
Event | International Conference on Machine Learning - Long Beach, United States Duration: 9 Jun 2019 → 15 Jun 2019 Conference number: 36 |
Publication series
Name | Proceedings of Machine Learning Research |
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Publisher | PMLR |
Volume | 97 |
ISSN (Electronic) | 6438-6447 |
Conference
Conference | International Conference on Machine Learning |
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Abbreviated title | ICML |
Country/Territory | United States |
City | Long Beach |
Period | 09/06/2019 → 15/06/2019 |
Keywords
- Deep Learning