TY - JOUR
T1 - Toward More Practical Label Inference Attacks Against Graph-Based Vertical Federated Learning
AU - Liu, Yimin
AU - Jiang, Peng
AU - Zhu, Liehuang
N1 - Publisher Copyright:
© 2005-2012 IEEE.
PY - 2026
Y1 - 2026
N2 - Graph-based vertical federated learning (GVFL) enables an active party who owns a labeled graph to collaborate with passive parties who possess additional node features and edges to improve model performance. GVFL shares representations and gradients, allowing passive parties to retain their optimized bottom models, which makes previous GVFL algorithms unable to resist label inference attacks. However, most attacks assume that the attacker has access to the training data's exact class space, the top model, or labeled auxiliary datasets from the training domain. These strong assumptions are not practical for real-world GVFL applications. In this paper, we propose Knowledge Transfer Attack (KTA), which leverages only auxiliary graphs from non-training domains to infer private labels. To address domain shift and ensure effective supervision transfer, KTA adapts a surrogate classifier in an aligned representation space while mitigating the negative influence of irrelevant outlier-class supervision. Specifically, KTA exploits the global consistency of cross-domain graphs and incorporates adaptive shift parameters into graph encoding. KTA then aligns cross-domain distributions within the shared class space and mitigates negative transfer by filtering outlier source classes. Experiments confirm the effectiveness of KTA in inferring the active party's private labels and superiority over state-of-the-art attacks.
AB - Graph-based vertical federated learning (GVFL) enables an active party who owns a labeled graph to collaborate with passive parties who possess additional node features and edges to improve model performance. GVFL shares representations and gradients, allowing passive parties to retain their optimized bottom models, which makes previous GVFL algorithms unable to resist label inference attacks. However, most attacks assume that the attacker has access to the training data's exact class space, the top model, or labeled auxiliary datasets from the training domain. These strong assumptions are not practical for real-world GVFL applications. In this paper, we propose Knowledge Transfer Attack (KTA), which leverages only auxiliary graphs from non-training domains to infer private labels. To address domain shift and ensure effective supervision transfer, KTA adapts a surrogate classifier in an aligned representation space while mitigating the negative influence of irrelevant outlier-class supervision. Specifically, KTA exploits the global consistency of cross-domain graphs and incorporates adaptive shift parameters into graph encoding. KTA then aligns cross-domain distributions within the shared class space and mitigates negative transfer by filtering outlier source classes. Experiments confirm the effectiveness of KTA in inferring the active party's private labels and superiority over state-of-the-art attacks.
KW - Graph-based vertical federated learning (GVFL)
KW - domain adaptation
KW - practical label inference attacks
KW - privacy leakage
UR - https://www.scopus.com/pages/publications/105039587763
U2 - 10.1109/TIFS.2026.3694646
DO - 10.1109/TIFS.2026.3694646
M3 - Article
AN - SCOPUS:105039587763
SN - 1556-6013
VL - 21
SP - 4970
EP - 4984
JO - IEEE Transactions on Information Forensics and Security
JF - IEEE Transactions on Information Forensics and Security
ER -