论文标题

在随机平滑上的维数的诅咒,可证明鲁棒性

Curse of Dimensionality on Randomized Smoothing for Certifiable Robustness

论文作者

Kumar, Aounon, Levine, Alexander, Goldstein, Tom, Feizi, Soheil

论文摘要

仅使用简单的各向同性高斯分布,随机平滑性可与$ \ ell_2 $ norm边界对手产生良好的稳健性。在这项工作中,我们表明,扩展平滑技术来防御其他攻击模型可能具有挑战性,尤其是在高维度中。 In particular, for a vast class of i.i.d.~smoothing distributions, we prove that the largest $\ell_p$-radius that can be certified decreases as $O(1/d^{\frac{1}{2} - \frac{1}{p}})$ with dimension $d$ for $p > 2$.值得注意的是,对于$ p \ geq 2 $,这种对$ d $的依赖性不超过$ \ ell_p $ -radius的依赖性,该$ \ ell_p $ -radius可以使用各向同性高斯平滑,从根本上使匹配的下限在健壮性半径上匹配。 When restricted to {\it generalized} Gaussian smoothing, these two bounds can be shown to be within a constant factor of each other in an asymptotic sense, establishing that Gaussian smoothing provides the best possible results, up to a constant factor, when $p \geq 2$.我们提出了有关CIFAR的实验结果,以验证我们的理论。对于其他平滑分布,例如在$ \ ell_1 $或$ \ ell_ \ infty $ -NORM球中的均匀分布,我们显示了$ O(1 / d)$和$ o的上限(1 / d^{1 - \ frac {1} {1} {p}}} {p}}} $,这些都具有$ d $ $ d $。

Randomized smoothing, using just a simple isotropic Gaussian distribution, has been shown to produce good robustness guarantees against $\ell_2$-norm bounded adversaries. In this work, we show that extending the smoothing technique to defend against other attack models can be challenging, especially in the high-dimensional regime. In particular, for a vast class of i.i.d.~smoothing distributions, we prove that the largest $\ell_p$-radius that can be certified decreases as $O(1/d^{\frac{1}{2} - \frac{1}{p}})$ with dimension $d$ for $p > 2$. Notably, for $p \geq 2$, this dependence on $d$ is no better than that of the $\ell_p$-radius that can be certified using isotropic Gaussian smoothing, essentially putting a matching lower bound on the robustness radius. When restricted to {\it generalized} Gaussian smoothing, these two bounds can be shown to be within a constant factor of each other in an asymptotic sense, establishing that Gaussian smoothing provides the best possible results, up to a constant factor, when $p \geq 2$. We present experimental results on CIFAR to validate our theory. For other smoothing distributions, such as, a uniform distribution within an $\ell_1$ or an $\ell_\infty$-norm ball, we show upper bounds of the form $O(1 / d)$ and $O(1 / d^{1 - \frac{1}{p}})$ respectively, which have an even worse dependence on $d$.

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