Feb. 5, 2024, 6:45 a.m. | Mohammed SbihiENAC Sophie JanIMT Nicolas CouellanIMT, ENAC

stat.ML updates on arXiv.org arxiv.org

It is well established that to ensure or certify the robustness of a neural network, its Lipschitz constant plays a prominent role. However, its calculation is NP-hard. In this note, by taking into account activation regions at each layer as new constraints, we propose new quadratically constrained MIP formulations for the neural network Lipschitz estimation problem. The solutions of these problems give lower bounds and upper bounds of the Lipschitz constant and we detail conditions when they coincide with the …

constraints layer math.oc network networks neural network neural networks np-hard relu robustness role stat.ml

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