LGMar 6, 2023

A Unified Algebraic Perspective on Lipschitz Neural Networks

arXiv:2303.03169v270 citationsh-index: 25Has Code
Originality Incremental advance
AI Analysis

This work provides a theoretical unification for researchers in adversarial robustness, though it appears incremental as it builds on existing Lipschitz network techniques.

The paper tackles the problem of designing neural networks with controlled Lipschitz constants for robustness against adversarial attacks by introducing a unified algebraic perspective that generalizes existing 1-Lipschitz methods, showing that SDP-based Lipschitz Layers (SLL) outperform previous approaches on certified robust accuracy in image classification experiments.

Important research efforts have focused on the design and training of neural networks with a controlled Lipschitz constant. The goal is to increase and sometimes guarantee the robustness against adversarial attacks. Recent promising techniques draw inspirations from different backgrounds to design 1-Lipschitz neural networks, just to name a few: convex potential layers derive from the discretization of continuous dynamical systems, Almost-Orthogonal-Layer proposes a tailored method for matrix rescaling. However, it is today important to consider the recent and promising contributions in the field under a common theoretical lens to better design new and improved layers. This paper introduces a novel algebraic perspective unifying various types of 1-Lipschitz neural networks, including the ones previously mentioned, along with methods based on orthogonality and spectral methods. Interestingly, we show that many existing techniques can be derived and generalized via finding analytical solutions of a common semidefinite programming (SDP) condition. We also prove that AOL biases the scaled weight to the ones which are close to the set of orthogonal matrices in a certain mathematical manner. Moreover, our algebraic condition, combined with the Gershgorin circle theorem, readily leads to new and diverse parameterizations for 1-Lipschitz network layers. Our approach, called SDP-based Lipschitz Layers (SLL), allows us to design non-trivial yet efficient generalization of convex potential layers. Finally, the comprehensive set of experiments on image classification shows that SLLs outperform previous approaches on certified robust accuracy. Code is available at https://github.com/araujoalexandre/Lipschitz-SLL-Networks.

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