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Abstract
We propose a method to learn deep ReLU-based classifiers that are provably
robust against norm-bounded adversarial perturbations on the training data. For
previously unseen examples, the approach is guaranteed to detect all
adversarial examples, though it may flag some non-adversarial examples as well.
The basic idea is to consider a convex outer approximation of the set of
activations reachable through a norm-bounded perturbation, and we develop a
robust optimization procedure that minimizes the worst case loss over this
outer region (via a linear program). Crucially, we show that the dual problem
to this linear program can be represented itself as a deep network similar to
the backpropagation network, leading to very efficient optimization approaches
that produce guaranteed bounds on the robust loss. The end result is that by
executing a few more forward and backward passes through a slightly modified
version of the original network (though possibly with much larger batch sizes),
we can learn a classifier that is provably robust to any norm-bounded
adversarial attack. We illustrate the approach on a number of tasks to train
classifiers with robust adversarial guarantees (e.g. for MNIST, we produce a
convolutional classifier that provably has less than 5.8% test error for any
adversarial attack with bounded $\ell_\infty$ norm less than $\epsilon = 0.1$),
and code for all experiments in the paper is available at
https://github.com/locuslab/convex_adversarial.