Taipan: A Query-free Transfer-based Multiple Sensitive Attribute Inference Attack Solely from Publicly Released Graphs
Ying Song, Balaji Palanisamy

TL;DR
Taipan is a novel query-free transfer-based attack method that infers multiple sensitive attributes solely from publicly available graph data, revealing a critical privacy vulnerability.
Contribution
It introduces the first framework for multi-attribute inference on graphs without queries, utilizing hierarchical routing and prompt-guided refinement to improve attack effectiveness.
Findings
Achieves strong inference performance across various datasets.
Remains effective under differential privacy protections.
Works in both same-distribution and out-of-distribution scenarios.
Abstract
Graph-structured data underpin a wide spectrum of modern applications. However, complex graph topologies and homophilic patterns can facilitate attribute inference attacks (AIAs) by enabling sensitive information leakage to propagate across local neighborhoods. Existing AIAs predominantly assume that adversaries can probe sensitive attributes through repeated model queries. Such assumptions are often impractical in real-world settings due to stringent data protection regulations, prohibitive query budgets, and heightened detection risks, especially when inferring multiple sensitive attributes. More critically, this model-centric perspective obscures a pervasive blind spot: \textbf{intrinsic multiple sensitive information leakage arising solely from publicly released graphs.} To exploit this unexplored vulnerability, we introduce a new attack paradigm and propose \textbf{Taipan, the…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Advanced Graph Neural Networks · Data Quality and Management
