Adversarial Attacks on Graph Classifiers via Bayesian Optimisation

Abstract

Graph neural networks, a popular class of models effective in a wide range of graph-based learning tasks, have been shown to be vulnerable to adversarial attacks. While the majority of the literature focuses on such vulnerability in node-level classification tasks, little effort has been dedicated to analysing adversarial attacks on graph-level classification, an important problem with numerous real-life applications such as biochemistry and social network analysis. The few existing methods often require unrealistic setups, such as access to internal information of the victim models, or an impractically-large number of queries. We present a novel Bayesian optimisation-based attack method for graph classification models. Our method is black-box, query-efficient and parsimonious with respect to the perturbation applied. We empirically validate the effectiveness and flexibility of the proposed method on a wide range of graph classification tasks involving varying graph properties, constraints and modes of attack. Finally, we analyse common interpretable patterns behind the adversarial samples produced, which may shed further light on the adversarial robustness of graph classification models.

Publication
Advances in Neural Information Processing Systems 34

A preliminary version of this paper appeared at the ICML 2021 Workshop on Adversarial Machine Learning.

Xingchen Wan
Xingchen Wan
Research Scientist

My research interests include large language models, Bayesian optimization, AutoML, and machine learning on graphs.