Leveraging Vulnerabilities in Temporal Graph Neural Networks via Strategic High-Impact Assaults

dc.contributor.authorJeon, Dong Hyun
dc.contributor.authorZhu, Lijing
dc.contributor.authorLi, Haifang
dc.contributor.authorLi, Pengze
dc.contributor.authorFeng, Jingna
dc.contributor.authorDuan, Tiehang
dc.contributor.authorSong, Houbing
dc.contributor.authorTao, Cui
dc.contributor.authorNiu, Shuteng
dc.date.accessioned2025-11-21T00:30:18Z
dc.date.issued2025-09-29
dc.description.abstractTemporal Graph Neural Networks (TGNNs) have become indispensable for analyzing dynamic graphs in critical applications such as social networks, communication systems, and financial networks. However, the robustness of TGNNs against adversarial attacks, particularly sophisticated attacks that exploit the temporal dimension, remains a significant challenge. Existing attack methods for Spatio-Temporal Dynamic Graphs (STDGs) often rely on simplistic, easily detectable perturbations (e.g., random edge additions/deletions) and fail to strategically target the most influential nodes and edges for maximum impact. We introduce the High Impact Attack (HIA), a novel restricted black-box attack framework specifically designed to overcome these limitations and expose critical vulnerabilities in TGNNs. HIA leverages a data-driven surrogate model to identify structurally important nodes (central to network connectivity) and dynamically important nodes (critical for the graph's temporal evolution). It then employs a hybrid perturbation strategy, combining strategic edge injection (to create misleading connections) and targeted edge deletion (to disrupt essential pathways), maximizing TGNN performance degradation. Importantly, HIA minimizes the number of perturbations to enhance stealth, making it more challenging to detect. Comprehensive experiments on five real-world datasets and four representative TGNN architectures (TGN, JODIE, DySAT, and TGAT) demonstrate that HIA significantly reduces TGNN accuracy on the link prediction task, achieving up to a 35.55% decrease in Mean Reciprocal Rank (MRR) - a substantial improvement over state-of-the-art baselines. These results highlight fundamental vulnerabilities in current STDG models and underscore the urgent need for robust defenses that account for both structural and temporal dynamics.
dc.description.sponsorshipThis study is partially supported by NIH grant R01AG084236, R01AG083039. This work was supported in part by the U.S. National Science Foundation under Grant No. 2317117.
dc.description.urihttp://arxiv.org/abs/2509.25418
dc.format.extent11 pages
dc.genrejournal articles
dc.genrepreprints
dc.identifierdoi:10.13016/m2mpvc-lar4
dc.identifier.urihttps://doi.org/10.1145/3746252.3761282
dc.identifier.urihttp://hdl.handle.net/11603/40868
dc.language.isoen
dc.relation.isAvailableAtThe University of Maryland, Baltimore County (UMBC)
dc.relation.ispartofUMBC Faculty Collection
dc.relation.ispartofUMBC Information Systems Department
dc.rightsThis item is likely protected under Title 17 of the U.S. Copyright Law. Unless on a Creative Commons license, for uses protected by Copyright Law, contact the copyright holder or the author.
dc.subjectUMBC Security and Optimization for Networked Globe Laboratory (SONG Lab)
dc.subjectComputer Science - Machine Learning
dc.titleLeveraging Vulnerabilities in Temporal Graph Neural Networks via Strategic High-Impact Assaults
dc.typeText
dcterms.creatorhttps://orcid.org/0000-0003-2631-9223

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