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Park, Saerom
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Lipschitz-certifiable training with a tight outer bound

Author(s)
Lee, SungyoonLee, JaewookPark, Saerom
Issued Date
2020-12-06
URI
https://scholarworks.unist.ac.kr/handle/201301/77738
Citation
Neural Information Processing Systems
Abstract
Verifiable training is a promising research direction for training a robust network. However, most verifiable training methods are slow or lack scalability. In this study, we propose a fast and scalable certifiable training algorithm based on Lipschitz analysis and interval arithmetic. Our certifiable training algorithm provides a tight propagated outer bound by introducing the box constraint propagation (BCP), and it efficiently computes the worst logit over the outer bound. In the experiments, we show that BCP achieves a tighter outer bound than the global Lipschitz-based outer bound. Moreover, our certifiable training algorithm is over 12 times faster than the state-of-the-art dual relaxation-based method; however, it achieves comparable or better verification performance, improving natural accuracy. Our fast certifiable training algorithm with the tight outer bound can scale to Tiny ImageNet with verification accuracy of 20.1%
Publisher
Neural information processing systems foundation

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