Double Whammy: Stealthy Data Manipulation aided Reconstruction Attack on Graph Federated Learning
Jinyin Chen, Minying Ma, Haibin Zheng, Qi Xuan

TL;DR
This paper introduces DMan4Rec, a novel data manipulation attack on Graph Federated Learning that enhances attack effectiveness, scalability, and stealthiness, demonstrating state-of-the-art results and posing new security challenges.
Contribution
It presents the first data manipulation aided reconstruction attack on GFL, improving effectiveness, scalability, and stealthiness over previous methods.
Findings
Achieves up to 99.59% AUC and 99.56% precision in black-box attacks.
Outperforms state-of-the-art baselines in attack performance.
Maintains graph structure invariance, ensuring stealthiness.
Abstract
Recent research has constructed successful graph reconstruction attack (GRA) on GFL. But these attacks are still challenged in aspects of effectiveness and stealth. To address the issues, we propose the first Data Manipulation aided Reconstruction attack on GFL, dubbed as DMan4Rec. The malicious client is born to manipulate its locally collected data to enhance graph stealing privacy from benign ones, so as to construct double whammy on GFL. It differs from previous work in three terms: (1) effectiveness - to fully utilize the sparsity and feature smoothness of the graph, novel penalty terms are designed adaptive to diverse similarity functions for connected and unconnected node pairs, as well as incorporation label smoothing on top of the original cross-entropy loss. (2) scalability - DMan4Rec is capable of both white-box and black-box attacks via training a supervised model to infer…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Privacy-Preserving Technologies in Data · Adversarial Robustness in Machine Learning
