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Boosting Certified ℓ∞\ell_\inftyℓ∞​ Robustness with EMA Method and Ensemble Model

1 July 2021
Binghui Li
Shijie Xin
Qizhe Zhang
ArXiv (abs)PDFHTMLGithub (4★)
Abstract

The neural network with 111-Lipschitz property based on ℓ∞\ell_\inftyℓ∞​-dist neuron has a theoretical guarantee in certified ℓ∞\ell_\inftyℓ∞​ robustness. However, due to the inherent difficulties in the training of the network, the certified accuracy of previous work is limited. In this paper, we propose two approaches to deal with these difficuties. Aiming at the characteristics of the training process based on ℓ∞\ell_\inftyℓ∞​-norm neural network, we introduce the EMA method to improve the training process. Considering the randomness of the training algorithm, we propose an ensemble method based on trained base models that have the 111-Lipschitz property and gain significant improvement in the small parameter network. Moreover, we give the theoretical analysis of the ensemble method based on the 111-Lipschitz property on the certified robustness, which ensures the effectiveness and stability of the algorithm. Our code is available at https://github.com/Theia-4869/EMA-and-Ensemble-Lip-Networks.

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