Publication | Closed Access
General Graph Data De-Anonymization
34
Citations
32
References
2016
Year
Privacy ProtectionEngineeringInformation SecurityNetwork AnalysisUnified SimilarityPseudonymizationComputational Social ScienceData ScienceData MiningData AnonymizationData IntegrationSocial ApplicationsPrivacy-preserving CommunicationData ManagementKnowledge DiscoveryData PrivacyData Re-identificationComputer ScienceMobility Trace DataPrivacy AnonymityPrivacyData SecurityGraph TheoryBusinessBig Data
When people utilize social applications and services, their privacy suffers a potential serious threat. In this article, we present a novel, robust, and effective de-anonymization attack to mobility trace data and social data. First, we design a Unified Similarity (US) measurement, which takes account of local and global structural characteristics of data, information obtained from auxiliary data, and knowledge inherited from ongoing de-anonymization results. By analyzing the measurement on real datasets, we find that some data can potentially be de-anonymized accurately and the other can be de-anonymized in a coarse granularity. Utilizing this property, we present a US-based De-Anonymization (DA) framework, which iteratively de-anonymizes data with accuracy guarantee. Then, to de-anonymize large-scale data without knowledge of the overlap size between the anonymized data and the auxiliary data, we generalize DA to an Adaptive De-Anonymization (ADA) framework. By smartly working on two core matching subgraphs , ADA achieves high de-anonymization accuracy and reduces computational overhead. Finally, we examine the presented de-anonymization attack on three well-known mobility traces: St Andrews, Infocom06, and Smallblue, and three social datasets: ArnetMiner, Google+, and Facebook. The experimental results demonstrate that the presented de-anonymization framework is very effective and robust to noise. The source code and employed datasets are now publicly available at SecGraph [2015].
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