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Certifiably Robust Interpretation via Renyi Differential Privacy

4 July 2021
Ao Liu
Xiaoyu Chen
Sijia Liu
Lirong Xia
Chuang Gan
    AAML
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Abstract

Motivated by the recent discovery that the interpretation maps of CNNs could easily be manipulated by adversarial attacks against network interpretability, we study the problem of interpretation robustness from a new perspective of \Renyi differential privacy (RDP). The advantages of our Renyi-Robust-Smooth (RDP-based interpretation method) are three-folds. First, it can offer provable and certifiable top-kkk robustness. That is, the top-kkk important attributions of the interpretation map are provably robust under any input perturbation with bounded ℓd\ell_dℓd​-norm (for any d≥1d\geq 1d≥1, including d=∞d = \inftyd=∞). Second, our proposed method offers ∼10%\sim10\%∼10% better experimental robustness than existing approaches in terms of the top-kkk attributions. Remarkably, the accuracy of Renyi-Robust-Smooth also outperforms existing approaches. Third, our method can provide a smooth tradeoff between robustness and computational efficiency. Experimentally, its top-kkk attributions are {\em twice} more robust than existing approaches when the computational resources are highly constrained.

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