A Systematic Study of Model Extraction Attacks on Graph Foundation Models
Haoyan Xu, Ruizhi Qian, Jiate Li, Yushun Dong, Minghao Lin, Hanson Yan, Zhengtao Yao, Qinghua Liu, Junhao Dong, Ruopeng Huang, Yue Zhao, Mengyuan Li

TL;DR
This paper systematically investigates the vulnerability of large-scale Graph Foundation Models to model extraction attacks, demonstrating that attackers can efficiently replicate these models with minimal data and cost, raising security concerns.
Contribution
It introduces a formal threat model and practical attack scenarios for GFMs, along with a lightweight extraction method that effectively approximates victim models.
Findings
Attackers can replicate GFMs with minimal data and cost
Extraction methods preserve zero-shot inference capabilities
GFMs significantly expand the attack surface for model extraction
Abstract
Graph machine learning has advanced rapidly in tasks such as link prediction, anomaly detection, and node classification. As models scale up, pretrained graph models have become valuable intellectual assets because they encode extensive computation and domain expertise. Building on these advances, Graph Foundation Models (GFMs) mark a major step forward by jointly pretraining graph and text encoders on massive and diverse data. This unifies structural and semantic understanding, enables zero-shot inference, and supports applications such as fraud detection and biomedical analysis. However, the high pretraining cost and broad cross-domain knowledge in GFMs also make them attractive targets for model extraction attacks (MEAs). Prior work has focused only on small graph neural networks trained on a single graph, leaving the security implications for large-scale and multimodal GFMs largely…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Adversarial Robustness in Machine Learning · Data Quality and Management
