k-Unlinkability: A privacy protection model for distributed data

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摘要

In the past, data holders protected the privacy of their constituents by issuing separate disclosures of sensitive (e.g., DNA) and identifying data (e.g., names). However, individuals visit many places and their location-visit patterns, or “trails”, can re-identify seemingly anonymous data. In this paper, we introduce a formal model of privacy protection, called k-unlinkability, to prevent trail re-identification in distributed data. The model guarantees that sensitive data trails are linkable to no less than k identities. We develop a graph-based model and illustrate how k-unlinkability is a more appropriate solution to this privacy problem compared to alternative privacy protection models.

论文关键词:Security & privacy,Knowledge discovery,Distributed databases

论文评审过程:Received 17 February 2007, Accepted 22 June 2007, Available online 6 August 2007.

论文官网地址:https://doi.org/10.1016/j.datak.2007.06.016