Computer Science > Machine Learning
[Submitted on 7 Sep 2023 (v1), last revised 9 Sep 2024 (this version, v2)]
Title:How adversarial attacks can disrupt seemingly stable accurate classifiers
View PDF HTML (experimental)Abstract:Adversarial attacks dramatically change the output of an otherwise accurate learning system using a seemingly inconsequential modification to a piece of input data. Paradoxically, empirical evidence indicates that even systems which are robust to large random perturbations of the input data remain susceptible to small, easily constructed, adversarial perturbations of their inputs. Here, we show that this may be seen as a fundamental feature of classifiers working with high dimensional input data. We introduce a simple generic and generalisable framework for which key behaviours observed in practical systems arise with high probability -- notably the simultaneous susceptibility of the (otherwise accurate) model to easily constructed adversarial attacks, and robustness to random perturbations of the input data. We confirm that the same phenomena are directly observed in practical neural networks trained on standard image classification problems, where even large additive random noise fails to trigger the adversarial instability of the network. A surprising takeaway is that even small margins separating a classifier's decision surface from training and testing data can hide adversarial susceptibility from being detected using randomly sampled perturbations. Counterintuitively, using additive noise during training or testing is therefore inefficient for eradicating or detecting adversarial examples, and more demanding adversarial training is required.
Submission history
From: Oliver Sutton [view email][v1] Thu, 7 Sep 2023 12:02:00 UTC (2,802 KB)
[v2] Mon, 9 Sep 2024 09:34:36 UTC (4,767 KB)
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