LGOCJan 22, 2021

Towards Optimal Branching of Linear and Semidefinite Relaxations for Neural Network Robustness Certification

arXiv:2101.09306v42 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of improving certification accuracy for neural network safety, though it is incremental as it builds on existing LP and SDP methods with novel branching schemes.

The paper tackles the problem of certifying ReLU neural network robustness against adversarial perturbations by proposing a branch-and-bound approach that partitions the input uncertainty set to reduce relaxation errors in LP and SDP methods, resulting in significant increases in certified test samples on datasets like MNIST and CIFAR-10.

In this paper, we study certifying the robustness of ReLU neural networks against adversarial input perturbations. To diminish the relaxation error suffered by the popular linear programming (LP) and semidefinite programming (SDP) certification methods, we take a branch-and-bound approach to propose partitioning the input uncertainty set and solving the relaxations on each part separately. We show that this approach reduces relaxation error, and that the error is eliminated entirely upon performing an LP relaxation with a partition intelligently designed to exploit the nature of the ReLU activations. To scale this approach to large networks, we consider using a coarser partition whereby the number of parts in the partition is reduced. We prove that computing such a coarse partition that directly minimizes the LP relaxation error is NP-hard. By instead minimizing the worst-case LP relaxation error, we develop a closed-form branching scheme in the single-hidden layer case. We extend the analysis to the SDP, where the feasible set geometry is exploited to design a branching scheme that minimizes the worst-case SDP relaxation error. Experiments on MNIST, CIFAR-10, and Wisconsin breast cancer diagnosis classifiers demonstrate significant increases in the percentages of test samples certified. By independently increasing the input size and the number of layers, we empirically illustrate under which regimes the branched LP and branched SDP are best applied. Finally, we extend our LP branching method into a multi-layer branching heuristic, which attains comparable performance to prior state-of-the-art heuristics on large-scale, deep neural network certification benchmarks.

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