TL;DR
This paper introduces an elastic distinguishability metric for location privacy that adapts noise levels based on geographic density, improving privacy protection in diverse urban environments.
Contribution
It proposes a novel elastic metric that warps geometrical distances to better reflect area density, enhancing geo-indistinguishability mechanisms.
Findings
Elastic metric adapts noise to geographic density.
Mechanism performs better outside city centers.
Improves privacy while maintaining utility.
Abstract
With the increasing popularity of hand-held devices, location-based applications and services have access to accurate and real-time location information, raising serious privacy concerns for their users. The recently introduced notion of geo-indistinguishability tries to address this problem by adapting the well-known concept of differential privacy to the area of location-based systems. Although geo-indistinguishability presents various appealing aspects, it has the problem of treating space in a uniform way, imposing the addition of the same amount of noise everywhere on the map. In this paper we propose a novel elastic distinguishability metric that warps the geometrical distance, capturing the different degrees of density of each area. As a consequence, the obtained mechanism adapts the level of noise while achieving the same degree of privacy everywhere. We also show how such an…
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