The feasibility and inevitability of stealth attacks

Author:

Tyukin Ivan Y1ORCID,Higham Desmond J2ORCID,Bastounis Alexander3ORCID,Woldegeorgis Eliyas3,Gorban Alexander N3ORCID

Affiliation:

1. Department of Mathematics, King’s College London , Strand, London WC2R 2LS , UK

2. School of Mathematics, University of Edinburgh , Peter Guthrie Tait Road, Edinburgh EH9 3FD , UK

3. School of Computing and Mathematical Sciences, University of Leicester , University Road, Leicester LE1 7RH , UK

Abstract

Abstract We develop and study new adversarial perturbations that enable an attacker to gain control over decisions in generic Artificial Intelligence (AI) systems including deep learning neural networks. In contrast to adversarial data modification, the attack mechanism we consider here involves alterations to the AI system itself. Such a stealth attack could be conducted by a mischievous, corrupt or disgruntled member of a software development team. It could also be made by those wishing to exploit a ‘democratization of AI’ agenda, where network architectures and trained parameter sets are shared publicly. We develop a range of new implementable attack strategies with accompanying analysis, showing that with high probability a stealth attack can be made transparent, in the sense that system performance is unchanged on a fixed validation set which is unknown to the attacker, while evoking any desired output on a trigger input of interest. The attacker only needs to have estimates of the size of the validation set and the spread of the AI’s relevant latent space. In the case of deep learning neural networks, we show that a one-neuron attack is possible—a modification to the weights and bias associated with a single neuron—revealing a vulnerability arising from over-parameterization. We illustrate these concepts using state-of-the-art architectures on two standard image data sets. Guided by the theory and computational results, we also propose strategies to guard against stealth attacks.

Funder

UKRI

UKRI Trustworthy Autonomous Systems Node

Publisher

Oxford University Press (OUP)

Subject

Applied Mathematics

Reference41 articles.

1. Threat of adversarial attacks on deep learning in computer vision: a survey;Akhtar;IEEE Access,2018

2. Democratizing AI;Allen;J. Am. Coll. Radiol.,2019

3. On instabilities of deep learning in image reconstruction and the potential costs of AI;Antun;Proc. Natl. Acad. Sci.,2020

4. Obfuscated gradients give a false sense of security: Circumventing defenses to adversarial examples;Athalye,2018

5. The extended Smale’s 9th problem–on computational barriers and paradoxes in estimation, regularisation, computer-assisted proofs and learning;Bastounis,2021

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