Privacy Auditing of Multi-domain Graph Pre-trained Model under Membership Inference Attacks
Jiayi Luo, Qingyun Sun, Yuecen Wei, Haonan Yuan, Xingcheng Fu, Jianxin Li

TL;DR
This paper investigates privacy risks in multi-domain graph pre-trained models under membership inference attacks, proposing a novel attack framework that reveals significant privacy vulnerabilities despite inherent challenges.
Contribution
It introduces MGP-MIA, a new framework for membership inference attacks on multi-domain graph models, addressing challenges like reduced overfitting signals and unrepresentative shadow datasets.
Findings
MGP-MIA effectively infers membership with high accuracy.
Multi-domain pre-training poses notable privacy risks.
Proposed methods amplify membership signals and improve shadow model reliability.
Abstract
Multi-domain graph pre-training has emerged as a pivotal technique in developing graph foundation models. While it greatly improves the generalization of graph neural networks, its privacy risks under membership inference attacks (MIAs), which aim to identify whether a specific instance was used in training (member), remain largely unexplored. However, effectively conducting MIAs against multi-domain graph pre-trained models is a significant challenge due to: (i) Enhanced Generalization Capability: Multi-domain pre-training reduces the overfitting characteristics commonly exploited by MIAs. (ii) Unrepresentative Shadow Datasets: Diverse training graphs hinder the obtaining of reliable shadow graphs. (iii) Weakened Membership Signals: Embedding-based outputs offer less informative cues than logits for MIAs. To tackle these challenges, we propose MGP-MIA, a novel framework for Membership…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Privacy-Preserving Technologies in Data · Machine Learning in Healthcare
