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Differentially Private Triangle Counting in Large Graphs

Xiaofeng Ding, Shujun Sheng, Huajian Zhou, Xiaodong Zhang, Zhifeng Bao, Pan Zhou, Hai Jin

2022IEEE Transactions on Knowledge and Data Engineering32 citationsDOIOpen Access PDF

Abstract

Triangle count is a critical parameter in mining relationships among people in social networks. However, directly publishing the findings obtained from triangle counts may bring potential privacy concern, which raises great challenges and opportunities for privacy-preserving triangle counting. In this paper, we choose to use differential privacy to protect triangle counting for large scale graphs. To reduce the large sensitivity caused in large graphs, we propose a novel graph projection method that can be used to obtain an upper bound for sensitivity in different distributions. In particular, we publish the triangle counts satisfying the node-differential privacy with two kinds of histograms: the triangle count distribution and the cumulative distribution. Moreover, we extend the research on privacy preserving triangle counting to one of its applications, the local clustering coefficient. Experimental results show that the cumulative distribution can fit the real statistical information better, and our proposed mechanism has achieved better accuracy for triangle counts while maintaining the requirement of differential privacy.

Topics & Concepts

Differential privacyComputer scienceHistogramCluster analysisData publishingPublicationClustering coefficientInformation sensitivitySensitivity (control systems)Data miningTheoretical computer scienceMathematicsComputer securityPublishingArtificial intelligenceLawPolitical scienceImage (mathematics)EngineeringElectronic engineeringBusinessAdvertisingPrivacy-Preserving Technologies in DataPrivacy, Security, and Data ProtectionInternet Traffic Analysis and Secure E-voting