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Privacy-Preserving Graph Embedding based on Local Differential Privacy

Authors :
Li, Zening
Li, Rong-Hua
Liao, Meihao
Jin, Fusheng
Wang, Guoren
Publication Year :
2023

Abstract

Graph embedding has become a powerful tool for learning latent representations of nodes in a graph. Despite its superior performance in various graph-based machine learning tasks, serious privacy concerns arise when the graph data contains personal or sensitive information. To address this issue, we investigate and develop graph embedding algorithms that satisfy local differential privacy (LDP). We introduce a novel privacy-preserving graph embedding framework, named PrivGE, to protect node data privacy. Specifically, we propose an LDP mechanism to obfuscate node data and utilize personalized PageRank as the proximity measure to learn node representations. Furthermore, we provide a theoretical analysis of the privacy guarantees and utility offered by the PrivGE framework. Extensive experiments on several real-world graph datasets demonstrate that PrivGE achieves an optimal balance between privacy and utility, and significantly outperforms existing methods in node classification and link prediction tasks.<br />Comment: to be published in CIKM 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.11060
Document Type :
Working Paper