Preventing Gradient Attenuation in Lipschitz Constrained Convolutional Networks

November 03, 2019 ยท Declared Dead ยท ๐Ÿ› Neural Information Processing Systems

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Authors Qiyang Li, Saminul Haque, Cem Anil, James Lucas, Roger Grosse, Jรถrn-Henrik Jacobsen arXiv ID 1911.00937 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 123 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
Lipschitz constraints under L2 norm on deep neural networks are useful for provable adversarial robustness bounds, stable training, and Wasserstein distance estimation. While heuristic approaches such as the gradient penalty have seen much practical success, it is challenging to achieve similar practical performance while provably enforcing a Lipschitz constraint. In principle, one can design Lipschitz constrained architectures using the composition property of Lipschitz functions, but Anil et al. recently identified a key obstacle to this approach: gradient norm attenuation. They showed how to circumvent this problem in the case of fully connected networks by designing each layer to be gradient norm preserving. We extend their approach to train scalable, expressive, provably Lipschitz convolutional networks. In particular, we present the Block Convolution Orthogonal Parameterization (BCOP), an expressive parameterization of orthogonal convolution operations. We show that even though the space of orthogonal convolutions is disconnected, the largest connected component of BCOP with 2n channels can represent arbitrary BCOP convolutions over n channels. Our BCOP parameterization allows us to train large convolutional networks with provable Lipschitz bounds. Empirically, we find that it is competitive with existing approaches to provable adversarial robustness and Wasserstein distance estimation.
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