Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

A Tale of Evil Twins: Adversarial Inputs versus Poisoned Models

About

Despite their tremendous success in a range of domains, deep learning systems are inherently susceptible to two types of manipulations: adversarial inputs -- maliciously crafted samples that deceive target deep neural network (DNN) models, and poisoned models -- adversely forged DNNs that misbehave on pre-defined inputs. While prior work has intensively studied the two attack vectors in parallel, there is still a lack of understanding about their fundamental connections: what are the dynamic interactions between the two attack vectors? what are the implications of such interactions for optimizing existing attacks? what are the potential countermeasures against the enhanced attacks? Answering these key questions is crucial for assessing and mitigating the holistic vulnerabilities of DNNs deployed in realistic settings. Here we take a solid step towards this goal by conducting the first systematic study of the two attack vectors within a unified framework. Specifically, (i) we develop a new attack model that jointly optimizes adversarial inputs and poisoned models; (ii) with both analytical and empirical evidence, we reveal that there exist intriguing "mutual reinforcement" effects between the two attack vectors -- leveraging one vector significantly amplifies the effectiveness of the other; (iii) we demonstrate that such effects enable a large design spectrum for the adversary to enhance the existing attacks that exploit both vectors (e.g., backdoor attacks), such as maximizing the attack evasiveness with respect to various detection methods; (iv) finally, we discuss potential countermeasures against such optimized attacks and their technical challenges, pointing to several promising research directions.

Ren Pang, Hua Shen, Xinyang Zhang, Shouling Ji, Yevgeniy Vorobeychik, Xiapu Luo, Alex Liu, Ting Wang• 2019

Related benchmarks

TaskDatasetResultRank
Backdoor Attack on Offline RLD4RL Ant
ASR71.8
9
Backdoor Attack on Offline RLD4RL Pen
Attack Success Rate (ASR)66.7
9
Trojan Attack (Target action: '1')pen
ASR100
9
Trojan Attack (Target action: 'arithmetic')Halfcheetah
Attack Success Rate (ASR)100
9
Trojan Attack (Target action: 'fixed random')Halfcheetah
ASR100
9
Trojan Attack (Target action: 'fixed random')Ant
ASR69.3
9
Trojan Attack (Target action: 'fixed random')Kitchen (Kit)
ASR99
9
Trojan Attack (Target action: 'fixed random')pen
Attack Success Rate (ASR)100
9
Backdoor Attack on Offline RLD4RL Hopper v2 (offline)
ASR60.4
9
Trojan Attack (Target action: '1')Halfcheetah
ASR100
9
Showing 10 of 24 rows

Other info

Follow for update