2020
DOI: 10.48550/arxiv.2006.06643
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Smoothed Geometry for Robust Attribution

Zifan Wang,
Haofan Wang,
Shakul Ramkumar
et al.

Abstract: Feature attributions are a popular tool for explaining the behavior of Deep Neural Networks (DNNs), but have recently been shown to be vulnerable to attacks that produce divergent explanations for nearby inputs. This lack of robustness is especially problematic in high-stakes applications where adversarially-manipulated explanations could impair safety and trustworthiness. Building on a geometric understanding of these attacks presented in recent work, we identify Lipschitz continuity conditions on models' gra… Show more

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