Bad Citrus: Reducing Adversarial Costs with Model Distances

10/06/2022
by   Giorgio Severi, et al.
0

Recent work by Jia et al., showed the possibility of effectively computing pairwise model distances in weight space, using a model explanation technique known as LIME. This method requires query-only access to the two models under examination. We argue this insight can be leveraged by an adversary to reduce the net cost (number of queries) of launching an evasion campaign against a deployed model. We show that there is a strong negative correlation between the success rate of adversarial transfer and the distance between the victim model and the surrogate used to generate the evasive samples. Thus, we propose and evaluate a method to reduce adversarial costs by finding the closest surrogate model for adversarial transfer.

READ FULL TEXT
research
07/01/2020

Query-Free Adversarial Transfer via Undertrained Surrogates

Deep neural networks have been shown to be highly vulnerable to adversar...
research
08/07/2022

Blackbox Attacks via Surrogate Ensemble Search

Blackbox adversarial attacks can be categorized into transfer- and query...
research
12/02/2019

Deep Neural Network Fingerprinting by Conferrable Adversarial Examples

In Machine Learning as a Service, a provider trains a deep neural networ...
research
03/16/2022

Attacking deep networks with surrogate-based adversarial black-box methods is easy

A recent line of work on black-box adversarial attacks has revived the u...
research
02/10/2020

Playing to Learn Better: Repeated Games for Adversarial Learning with Multiple Classifiers

We consider the problem of prediction by a machine learning algorithm, c...
research
06/03/2019

DAWN: Dynamic Adversarial Watermarking of Neural Networks

Training machine learning (ML) models is expensive in terms of computati...
research
11/21/2017

The Manifold Assumption and Defenses Against Adversarial Perturbations

In the adversarial-perturbation problem of neural networks, an adversary...

Please sign up or login with your details

Forgot password? Click here to reset