Heterogeneous Graph Backdoor Attack
Jiawei Chen, Lusi Li, Daniel Takabi, Masha Sosonkina, Rui Ning

TL;DR
This paper introduces HGBA, a novel backdoor attack method tailored for heterogeneous graph neural networks, demonstrating high effectiveness, stealth, and robustness against defenses, with potential risks to security-critical applications.
Contribution
We propose the first backdoor attack specifically designed for HGNNs, featuring a relation-based trigger mechanism and improved evaluation protocols.
Findings
HGBA outperforms existing attacks in black-box settings.
It requires minimal structural modifications for effective backdoor injection.
HGBA is robust against feature perturbations and defenses.
Abstract
Heterogeneous Graph Neural Networks (HGNNs) excel in modeling complex, multi-typed relationships across diverse domains, yet their vulnerability to backdoor attacks remains unexplored. To address this gap, we conduct the first investigation into the susceptibility of HGNNs to existing graph backdoor attacks, revealing three critical issues: (1) high attack budget required for effective backdoor injection, (2) inefficient and unreliable backdoor activation, and (3) inaccurate attack effectiveness evaluation. To tackle these issues, we propose the Heterogeneous Graph Backdoor Attack (HGBA), the first backdoor attack specifically designed for HGNNs, introducing a novel relation-based trigger mechanism that establishes specific connections between a strategically selected trigger node and poisoned nodes via the backdoor metapath. HGBA achieves efficient and stealthy backdoor injection with…
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Taxonomy
TopicsAdvanced Malware Detection Techniques · Advanced Graph Neural Networks · Network Security and Intrusion Detection
