2020
DOI: 10.48550/arxiv.2009.10526
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Adversarial Training with Stochastic Weight Average

Abstract: Adversarial training deep neural networks often experience serious overfitting problem. Recently, it is explained that the overfitting happens because the sample complexity of training data is insufficient to generalize robustness. In traditional machine learning, one way to relieve overfitting from the lack of data is to use ensemble methods. However, adversarial training multiple networks is extremely expensive. Moreover, we found that there is a dilemma on choosing target model to generate adversarial examp… Show more

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References 30 publications
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