Marco Gramaglia

2papers

2 Papers

CYJan 9, 2017
$k^{τ,ε}$-anonymity: Towards Privacy-Preserving Publishing of Spatiotemporal Trajectory Data

Marco Gramaglia, Marco Fiore, Alberto Tarable et al.

Mobile network operators can track subscribers via passive or active monitoring of device locations. The recorded trajectories offer an unprecedented outlook on the activities of large user populations, which enables developing new networking solutions and services, and scaling up studies across research disciplines. Yet, the disclosure of individual trajectories raises significant privacy concerns: thus, these data are often protected by restrictive non-disclosure agreements that limit their availability and impede potential usages. In this paper, we contribute to the development of technical solutions to the problem of privacy-preserving publishing of spatiotemporal trajectories of mobile subscribers. We propose an algorithm that generalizes the data so that they satisfy $k^{τ,ε}$-anonymity, an original privacy criterion that thwarts attacks on trajectories. Evaluations with real-world datasets demonstrate that our algorithm attains its objective while retaining a substantial level of accuracy in the data. Our work is a step forward in the direction of open, privacy-preserving datasets of spatiotemporal trajectories.

CYDec 31, 2014
On the anonymizability of mobile traffic datasets

Marco Gramaglia, Marco Fiore

Preserving user privacy is paramount when it comes to publicly disclosed datasets that contain fine-grained data about large populations. The problem is especially critical in the case of mobile traffic datasets collected by cellular operators, as they feature elevate subscriber trajectory uniqueness and they are resistant to anonymization through spatiotemporal generalization. In this work, we investigate the $k$-anonymizability of trajectories in two large-scale mobile traffic datasets, by means of a novel dedicated measure. Our results are in agreement with those of previous analyses, however they also provide additional insights on the reasons behind the poor anonimizability of mobile traffic datasets. As such, our study is a step forward in the direction of a more robust dataset anonymization.