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PHDP: Preserving Persistent Homology in Differentially Private Graph Publications

机译:PHDP:在差异私有图出版物中保留持久同源性

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Online social networks (OSNs) routinely share and analyze user data. This requires protection of sensitive user information. Researchers have proposed several techniques to anonymize the data of OSNs. Some differential-privacy techniques claim to preserve graph utility under certain graph metrics, as well as guarantee strict privacy. However, each graph utility metric reveals the whole graph in specific aspects.We employ persistent homology to give a comprehensive description of the graph utility in OSNs. This paper proposes a novel anonymization scheme, called PHDP, which preserves persistent homology and satisfies differential privacy. To strengthen privacy protection, we add exponential noise to the adjacency matrix of the network and find the number of adding/deleting edges. To maintain persistent homology, we collect edges along persistent structures and avoid perturbation on these edges. Our regeneration algorithms balance persistent homology with differential privacy, publishing an anonymized graph with a guarantee of both. Evaluation result show that the PHDP-anonymized graph achieves high graph utility, both in graph metrics and application metrics.
机译:在线社交网络(OSN)定期共享和分析用户数据。这需要保护敏感的用户信息。研究人员提出了几种匿名化OSN数据的技术。一些差异隐私技术声称可以在某些图形指标下保留图形实用性,并保证严格的隐私。但是,每个图实用程序度量标准都可以从特定方面揭示整个图。我们使用持久性同源性来全面描述OSN中的图实用程序。本文提出了一种新的匿名化方案,称为PHDP,它可以保留持久的同源性并满足差异性隐私。为了加强隐私保护,我们将指数噪声添加到网络的邻接矩阵中,并找到添加/删除边的数量。为了保持持久的同源性,我们沿着持久的结构收集边缘,并避免在这些边缘上产生干扰。我们的再生算法平衡了持久性同源性与差异性隐私之间的关系,同时发布了匿名图并保证了两者。评估结果表明,PHDP匿名图在图指标和应用指标上都具有很高的图效用。

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