PrivGraph: Differentially Private Graph Data Publication by Exploiting Community Information

Quan Yuan, Zhikun Zhang, Linkang Du, Min Chen, Peng Cheng, Mingyang Sun

Research output: Working paper / PreprintPreprintAcademic

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Abstract

Graph data is used in a wide range of applications, while analyzing graph data without protection is prone to privacy breach risks. To mitigate the privacy risks, we resort to the standard technique of differential privacy to publish a synthetic graph. However, existing differentially private graph synthesis approaches either introduce excessive noise by directly perturbing the adjacency matrix, or suffer significant information loss during the graph encoding process. In this paper, we propose an effective graph synthesis algorithm PrivGraph by exploiting the community information. Concretely, PrivGraph differentially privately partitions the private graph into communities, extracts intra-community and inter-community information, and reconstructs the graph from the extracted graph information. We validate the effectiveness of PrivGraph on six real-world graph datasets and seven commonly used graph metrics.
Original languageUndefined/Unknown
PublisherarXiv
Number of pages24
DOIs
Publication statusPublished - 13 Oct 2023

Bibliographical note

The extended version of the USENIX Security '23 paper

Keywords

  • cs.CR

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