English

Certifiably Robust Interpretation via Renyi Differential Privacy

Machine Learning 2021-07-06 v1 Machine Learning

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-kk robustness. That is, the top-kk important attributions of the interpretation map are provably robust under any input perturbation with bounded d\ell_d-norm (for any d1d\geq 1, including d=d = \infty). Second, our proposed method offers 10%\sim10\% better experimental robustness than existing approaches in terms of the top-kk 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-kk attributions are {\em twice} more robust than existing approaches when the computational resources are highly constrained.

Keywords

Cite

@article{arxiv.2107.01561,
  title  = {Certifiably Robust Interpretation via Renyi Differential Privacy},
  author = {Ao Liu and Xiaoyu Chen and Sijia Liu and Lirong Xia and Chuang Gan},
  journal= {arXiv preprint arXiv:2107.01561},
  year   = {2021}
}

Comments

19 page main text + appendix

R2 v1 2026-06-24T03:52:24.044Z