JOURNAL ARTICLE

Is Approximation Universally Defensive Against Adversarial Attacks in Deep Neural Networks?

Ayesha SiddiqueKhaza Anuarul Hoque

Year: 2022 Journal:   2022 Design, Automation & Test in Europe Conference & Exhibition (DATE) Pages: 364-369

Abstract

Approximate computing is known for its effectiveness in improvising the energy efficiency of deep neural network (DNN) accelerators at the cost of slight accuracy loss. Very recently, the inexact nature of approximate components, such as approximate multipliers have also been reported successful in defending adversarial attacks on DNNs models. Since the approximation errors traverse through the DNN layers as masked or unmasked, this raises a key research question—can approximate computing always offer a defense against adversarial attacks in DNNs, i.e., are they universally defensive? Towards this, we present an extensive adversarial robustness analysis of different approximate DNN accelerators (AxDNNs) using the state-of-the-art approximate multipliers. In particular, we evaluate the impact of ten adversarial attacks on different AxDNNs using the MNIST and CIFAR-10 datasets. Our results demonstrate that adversarial attacks on AxDNNs can cause 53% accuracy loss whereas the same attack may lead to almost no accuracy loss (as low as 0.06%) in the accurate DNN. Thus, approximate computing cannot be referred to as a universal defense strategy against adversarial attacks.

Keywords:
Adversarial system MNIST database Robustness (evolution) Deep neural networks Computer science Artificial neural network Artificial intelligence Key (lock) Deep learning Machine learning Computer security

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