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Fortified Networks: Improving the Robustness of Deep Networks by Modeling the Manifold of Hidden Representations

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arxiv 1804.02485 v1 pith:4VMBMWXW submitted 2018-04-07 stat.ML cs.LG

Fortified Networks: Improving the Robustness of Deep Networks by Modeling the Manifold of Hidden Representations

classification stat.ML cs.LG
keywords hiddennetworksdeepdatamanifoldrobustnessstatesadversarial
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Deep networks have achieved impressive results across a variety of important tasks. However a known weakness is a failure to perform well when evaluated on data which differ from the training distribution, even if these differences are very small, as is the case with adversarial examples. We propose Fortified Networks, a simple transformation of existing networks, which fortifies the hidden layers in a deep network by identifying when the hidden states are off of the data manifold, and maps these hidden states back to parts of the data manifold where the network performs well. Our principal contribution is to show that fortifying these hidden states improves the robustness of deep networks and our experiments (i) demonstrate improved robustness to standard adversarial attacks in both black-box and white-box threat models; (ii) suggest that our improvements are not primarily due to the gradient masking problem and (iii) show the advantage of doing this fortification in the hidden layers instead of the input space.

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