Litcius/Paper detail

EI-MTD: Moving Target Defense for Edge Intelligence against Adversarial Attacks

Yaguan Qian, Y.S. Guo, Qiqi Shao, Jiamin Wang, Bin Wang, Zhaoquan Gu, Xiang Ling, Chunming Wu

2022ACM Transactions on Privacy and Security23 citationsDOIOpen Access PDF

Abstract

Edge intelligence has played an important role in constructing smart cities, but the vulnerability of edge nodes to adversarial attacks becomes an urgent problem. A so-called adversarial example can fool a deep learning model on an edge node for misclassification. Due to the transferability property of adversarial examples, an adversary can easily fool a black-box model by a local substitute model. Edge nodes in general have limited resources, which cannot afford a complicated defense mechanism like that on a cloud data center. To address the challenge, we propose a dynamic defense mechanism, namely EI-MTD. The mechanism first obtains robust member models of small size through differential knowledge distillation from a complicated teacher model on a cloud data center. Then, a dynamic scheduling policy, which builds on a Bayesian Stackelberg game, is applied to the choice of a target model for service. This dynamic defense mechanism can prohibit the adversary from selecting an optimal substitute model for black-box attacks. We also conduct extensive experiments to evaluate the proposed mechanism, and results show that EI-MTD could protect edge intelligence effectively against adversarial attacks in black-box settings.

Topics & Concepts

Adversarial systemComputer scienceAdversaryComputer securityEnhanced Data Rates for GSM EvolutionCloud computingBlack boxArtificial intelligenceOperating systemAdversarial Robustness in Machine LearningAnomaly Detection Techniques and ApplicationsPrivacy-Preserving Technologies in Data
EI-MTD: Moving Target Defense for Edge Intelligence against Adversarial Attacks | Litcius