The success of applications for sharing GPS trajectories raises serious privacy concerns, in particular about users’ home addresses. In this paper we show that a Bayesian approach is natural and effective for a rigorous analysis of home-identification attacks and their countermeasures, in terms of privacy. We focus on a family of countermeasures named “privacy-region strategies”, consisting in publishing each trajectory from the first exit to the last entrance from/into a privacy region. Their performance is studied through simulations on Brownian motions.

(2019). Bayesian Analysis of Privacy Attacks on GPS Trajectories . Retrieved from http://hdl.handle.net/10446/226597

Bayesian Analysis of Privacy Attacks on GPS Trajectories

Legramanti, Sirio
2019-01-01

Abstract

The success of applications for sharing GPS trajectories raises serious privacy concerns, in particular about users’ home addresses. In this paper we show that a Bayesian approach is natural and effective for a rigorous analysis of home-identification attacks and their countermeasures, in terms of privacy. We focus on a family of countermeasures named “privacy-region strategies”, consisting in publishing each trajectory from the first exit to the last entrance from/into a privacy region. Their performance is studied through simulations on Brownian motions.
2019
Legramanti, Sirio
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10446/226597
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