New Lower Bounds for Differential Privacy: How Low Can You Go?

نویسندگان

  • Lucas Kowalczyk
  • Tal Malkin
  • Jonathan Ullman
  • Daniel Wichs
چکیده

Mirror mirror on the wall, who’s tracing scheme is the fairest of them all. *Columbia University Department of Computer Science. [email protected]. †Columbia University Department of Computer Science. [email protected]. ‡Northeastern University College of Computer and Information Science. [email protected]. §Northeastern University College of Computer and Information Science. [email protected]

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تاریخ انتشار 2017