2021
DOI: 10.48550/arxiv.2109.04566
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SanitAIs: Unsupervised Data Augmentation to Sanitize Trojaned Neural Networks

Abstract: The application of self-supervised methods has resulted in broad improvements to neural network performance by leveraging large, untapped collections of unlabeled data to learn generalized underlying structure. In this work, we harness unsupervised data augmentation (UDA) to mitigate backdoor or Trojan attacks on deep neural networks. We show that UDA is more effective at removing the effects of a trigger than current state-of-the-art methods for both feature space and point triggers. These results demonstrate… Show more

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