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Defending and Harnessing the Bit-Flip Based Adversarial Weight Attack

Zhezhi He, Adnan Siraj Rakin, Jingtao Li, Chaitali Chakrabarti, Deliang Fan

202085 citationsDOI

Abstract

Recently, a new paradigm of the adversarial attack on the quantized neural network weights has attracted great attention, namely, the Bit-Flip based adversarial weight attack, aka. Bit-Flip Attack (BFA). BFA has shown extraordinary attacking ability, where the adversary can malfunction a quantized Deep Neural Network (DNN) as a random guess, through malicious bit-flips on a small set of vulnerable weight bits (e.g., 13 out of 93 millions bits of 8-bit quantized ResNet-18). However, there are no effective defensive methods to enhance the fault-tolerance capability of DNN against such BFA. In this work, we conduct comprehensive investigations on BFA and propose to leverage binarization-aware training and its relaxation - piece-wise clustering as simple and effective countermeasures to BFA. The experiments show that, for BFA to achieve the identical prediction accuracy degradation (e.g., below 11% on CIFAR-10), it requires 19.3× and 480.1× more effective malicious bit-flips on ResNet-20 and VGG-11 respectively, compared to defend-free counterparts.

Topics & Concepts

Computer scienceAdversarial systemLeverage (statistics)Artificial neural networkAKAAdversaryBit (key)Fault toleranceDeep neural networksArtificial intelligenceAlgorithmComputer engineeringTheoretical computer scienceComputer networkComputer securityDistributed computingLibrary scienceAdversarial Robustness in Machine LearningIntegrated Circuits and Semiconductor Failure AnalysisAdvanced Neural Network Applications
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