TL;DR
This paper empirically investigates the imperceptibility of adversarial attacks on tabular data, proposing tailored metrics to evaluate attack subtlety and revealing a trade-off between attack effectiveness and imperceptibility.
Contribution
It introduces a comprehensive set of imperceptibility metrics specific to tabular data and evaluates five attack methods, highlighting limitations and guiding future research.
Findings
Trade-off between attack imperceptibility and effectiveness
Proposed metrics effectively characterize attack subtlety
Identified limitations in current attack algorithms
Abstract
Adversarial attacks are a potential threat to machine learning models by causing incorrect predictions through imperceptible perturbations to the input data. While these attacks have been extensively studied in unstructured data like images, applying them to tabular data, poses new challenges. These challenges arise from the inherent heterogeneity and complex feature interdependencies in tabular data, which differ from the image data. To account for this distinction, it is necessary to establish tailored imperceptibility criteria specific to tabular data. However, there is currently a lack of standardised metrics for assessing the imperceptibility of adversarial attacks on tabular data. To address this gap, we propose a set of key properties and corresponding metrics designed to comprehensively characterise imperceptible adversarial attacks on tabular data. These are: proximity to the…
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Taxonomy
MethodsSparse Evolutionary Training
