Preserving Relation Privacy in Online Social Network Data

  title={Preserving Relation Privacy in Online Social Network Data},
  author={Na Li and Nan Zhang and Sajal K. Das},
  journal={IEEE Internet Computing},
Online social networks routinely publish data of interest to third parties, but in so doing often reveal relationships, such as a friendship or contractual association, that an attacker can exploit. This systematic look at existing privacy-preservation techniques highlights the vulnerabilities of users even in networks that completely anonymize identities. Through a taxonomy that categorizes techniques according to the degree of user identity exposure, the authors examine the ways that existing… CONTINUE READING
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