Publication | Closed Access
Linking Users Across Domains with Location Data
164
Citations
25
References
2016
Year
Unknown Venue
EngineeringInformation PrivacyLocalizationPseudonymizationLocation-based ServiceCross Domain AnalysisComputational Social ScienceData ScienceData MiningData AnonymizationData IntegrationData ManagementStatisticsLocation DataUnknown PatternPrivacy IssueData PrivacySame UserData Re-identificationPrivacyGeosocial NetworkData SecuritySocial ComputingLocation Information
Linking accounts of the same user across datasets -- even when personally identifying information is removed or unavailable -- is an important open problem studied in many contexts. Beyond many practical applications, (such as cross domain analysis, recommendation, and link prediction), understanding this problem more generally informs us on the privacy implications of data disclosure. Previous work has typically addressed this question using either different portions of the same dataset or observing the same behavior across thematically similar domains. In contrast, the general cross-domain case where users have different profiles independently generated from a common but unknown pattern raises new challenges, including difficulties in validation, and remains under-explored.
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