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Universal Approximation with Certified Networks

30 September 2019
Maximilian Baader
M. Mirman
Martin Vechev
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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 fff, there exists a network nnn such that: (i) nnn approximates fff arbitrarily close, and (ii) simple interval bound propagation of a region BBB through nnn yields a result that is arbitrarily close to the optimal output of fff on BBB. 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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