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Universal Approximation with Certified Networks

International Conference on Learning Representations (ICLR), 2019
Maximilian Baader
Martin Vechev
Abstract

Training neural networks to be certifiably robust is critical to ensure their safety against adversarial attacks. However, it is currently very difficult to train a neural network that is both accurate and certifiably robust. In this work we take a step towards addressing this challenge. We prove that for every continuous function ff, there exists a network nn such that: (i) nn approximates ff arbitrarily close, and (ii) simple interval bound propagation of a region BB through nn yields a result that is arbitrarily close to the optimal output of ff on BB. Our result can be seen as a Universal Approximation Theorem for interval-certified ReLU networks. To the best of our knowledge, this is the first work to prove the existence of accurate, interval-certified networks.

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