Group Property Inference Attacks Against Graph Neural Networks
Xiuling Wang, Wendy Hui Wang

TL;DR
This paper systematically studies group property inference attacks against Graph Neural Networks, revealing their effectiveness and proposing defenses to mitigate privacy risks while maintaining model performance.
Contribution
First comprehensive analysis of group property inference attacks on GNNs, including threat models, attack design, and defense mechanisms.
Findings
GPIA attacks outperform baselines in accuracy
Target model parameters reveal property presence
Proposed defenses reduce attack success with minimal accuracy loss
Abstract
With the fast adoption of machine learning (ML) techniques, sharing of ML models is becoming popular. However, ML models are vulnerable to privacy attacks that leak information about the training data. In this work, we focus on a particular type of privacy attacks named property inference attack (PIA) which infers the sensitive properties of the training data through the access to the target ML model. In particular, we consider Graph Neural Networks (GNNs) as the target model, and distribution of particular groups of nodes and links in the training graph as the target property. While the existing work has investigated PIAs that target at graph-level properties, no prior works have studied the inference of node and link properties at group level yet. In this work, we perform the first systematic study of group property inference attacks (GPIA) against GNNs. First, we consider a…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Adversarial Robustness in Machine Learning · Machine Learning in Materials Science
