Litcius/Paper detail

Seed-free Graph De-anonymiztiation with Adversarial Learning

Kaiyang Li, Guoming Lu, Guangchun Luo, Zhipeng Cai

202038 citationsDOI

Abstract

The huge amount of graph data are published and shared for research and business purposes, which brings great benefit for our society. However, user privacy is badly undermined even though user identity can be anonymized. Graph de-anonymization to identify nodes from an anonymized graph is widely adopted to evaluate users' privacy risks. Most existing de-anonymization methods which are heavily reliant on side information (e.g., seeds, user profiles, community labels) are unrealistic due to the difficulty of collecting this side information. A few graph de-anonymization methods only using structural information, called seed-free methods, have been proposed recently, which mainly take advantage of the local and manual features of nodes while overlooking the global structural information of the graph for de-anonymization.

Topics & Concepts

Computer scienceGraphAdversarial systemInformation privacyTheoretical computer scienceInformation retrievalData miningData scienceInternet privacyArtificial intelligencePrivacy-Preserving Technologies in DataPrivacy, Security, and Data ProtectionMobile Crowdsensing and Crowdsourcing