Randomization for adversarial robustness: the Good, the Bad and the Ugly

02/14/2023
by   Lucas Gnecco-Heredia, et al.
0

Deep neural networks are known to be vulnerable to adversarial attacks: A small perturbation that is imperceptible to a human can easily make a well-trained deep neural network misclassify. To defend against adversarial attacks, randomized classifiers have been proposed as a robust alternative to deterministic ones. In this work we show that in the binary classification setting, for any randomized classifier, there is always a deterministic classifier with better adversarial risk. In other words, randomization is not necessary for robustness. In many common randomization schemes, the deterministic classifiers with better risk are explicitly described: For example, we show that ensembles of classifiers are more robust than mixtures of classifiers, and randomized smoothing is more robust than input noise injection. Finally, experiments confirm our theoretical results with the two families of randomized classifiers we analyze.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/26/2020

Randomization matters. How to defend against strong adversarial attacks

Is there a classifier that ensures optimal robustness against all advers...
research
07/20/2023

Adversarial attacks for mixtures of classifiers

Mixtures of classifiers (a.k.a. randomized ensembles) have been proposed...
research
02/22/2021

On the robustness of randomized classifiers to adversarial examples

This paper investigates the theory of robustness against adversarial att...
research
05/12/2020

Robustness Verification for Classifier Ensembles

We give a formal verification procedure that decides whether a classifie...
research
11/28/2020

Deterministic Certification to Adversarial Attacks via Bernstein Polynomial Approximation

Randomized smoothing has established state-of-the-art provable robustnes...
research
02/04/2019

Theoretical evidence for adversarial robustness through randomization: the case of the Exponential family

This paper investigates the theory of robustness against adversarial att...
research
05/27/2022

(De-)Randomized Smoothing for Decision Stump Ensembles

Tree-based models are used in many high-stakes application domains such ...

Please sign up or login with your details

Forgot password? Click here to reset