Fastened crown: Tightened neural network robustness certificates

Z Lyu, CY Ko, Z Kong, N Wong, D Lin… - Proceedings of the AAAI …, 2020 - aaai.org
Z Lyu, CY Ko, Z Kong, N Wong, D Lin, L Daniel
Proceedings of the AAAI Conference on Artificial Intelligence, 2020aaai.org
The rapid growth of deep learning applications in real life is accompanied by severe safety
concerns. To mitigate this uneasy phenomenon, much research has been done providing
reliable evaluations of the fragility level in different deep neural networks. Apart from
devising adversarial attacks, quantifiers that certify safeguarded regions have also been
designed in the past five years. The summarizing work in (Salman et al. 2019) unifies a
family of existing verifiers under a convex relaxation framework. We draw inspiration from …
Abstract
The rapid growth of deep learning applications in real life is accompanied by severe safety concerns. To mitigate this uneasy phenomenon, much research has been done providing reliable evaluations of the fragility level in different deep neural networks. Apart from devising adversarial attacks, quantifiers that certify safeguarded regions have also been designed in the past five years. The summarizing work in (Salman et al. 2019) unifies a family of existing verifiers under a convex relaxation framework. We draw inspiration from such work and further demonstrate the optimality of deterministic CROWN (Zhang et al. 2018) solutions in a given linear programming problem under mild constraints. Given this theoretical result, the computationally expensive linear programming based method is shown to be unnecessary. We then propose an optimization-based approach FROWN (Fastened CROWN): a general algorithm to tighten robustness certificates for neural networks. Extensive experiments on various networks trained individually verify the effectiveness of FROWN in safeguarding larger robust regions.
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