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Publishing Community-Preserving Attributed Social Graphs with a Differential Privacy Guarantee

Xihui Chen, Sjouke Mauw, Yunior Ramírez-Cruz

2020Proceedings on Privacy Enhancing Technologies19 citationsDOIOpen Access PDF

Abstract

Abstract We present a novel method for publishing differentially private synthetic attributed graphs. Our method allows, for the first time, to publish synthetic graphs simultaneously preserving structural properties, user attributes and the community structure of the original graph. Our proposal relies on CAGM, a new community-preserving generative model for attributed graphs. We equip CAGM with efficient methods for attributed graph sampling and parameter estimation. For the latter, we introduce differentially private computation methods, which allow us to release communitypreserving synthetic attributed social graphs with a strong formal privacy guarantee. Through comprehensive experiments, we show that our new model outperforms its most relevant counterparts in synthesising differentially private attributed social graphs that preserve the community structure of the original graph, as well as degree sequences and clustering coefficients.

Topics & Concepts

Differential privacyPublicationComputer scienceTheoretical computer scienceGenerative modelCluster analysisGraphData publishingPublishingData miningSocial graphInformation privacyGenerative grammarSynthetic dataSampling (signal processing)Graph theoryComputationData modelingFormal descriptionDifferential (mechanical device)Artificial intelligencePrivacy-Preserving Technologies in DataAdvanced Graph Neural NetworksComplex Network Analysis Techniques
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