PULP

Achieving privacy and utility trade-off in user mobility data

Conference Paper (2017)
Author(s)

Sophie Cerf (Université Grenoble Alpes)

Vincent Primault (ENS-PSL Research University & CNRS)

Antoine Boutet (ENS-PSL Research University & CNRS)

Sonia Ben Mokhtar (ENS-PSL Research University & CNRS)

Robert Birke (Zurich Lab)

Sara Bouchenak (ENS-PSL Research University & CNRS)

Lydia Y. Chen (Zurich Lab)

Nicolas Marchand (Université Grenoble Alpes)

Bogdan Robu (Université Grenoble Alpes)

Affiliation
External organisation
DOI related publication
https://doi.org/10.1109/SRDS.2017.25 Final published version
More Info
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Publication Year
2017
Language
English
Affiliation
External organisation
Volume number
2017-September
Article number
8069079
Pages (from-to)
164-173
ISBN (electronic)
9781538616796
Event
36th IEEE International Symposium on Reliable Distributed Systems, SRDS 2017 (2017-09-26 - 2017-09-29), Hong Kong, Hong Kong
Downloads counter
196

Abstract

Leveraging location information in location-based services leads to improving service utility through geocontextualization. However, this raises privacy concerns as new knowledge can be inferred from location records, such as user's home and work places, or personal habits. Although Location Privacy Protection Mechanisms (LPPMs) provide a means to tackle this problem, they often require manual configuration posing significant challenges to service providers and users. Moreover, their impact on data privacy and utility is seldom assessed. In this paper, we present PULP, a model-driven system which automatically provides user-specific privacy protection and contributes to service utility via choosing adequate LPPM and configuring it. At the heart of PULP is nonlinear models that can capture the complex dependency of data privacy and utility for each individual user under given LPPM considered, i.e., Geo-Indistinguishability and Promesse. According to users' preferences on privacy and utility, PULP efficiently recommends suitable LPPM and corresponding configuration. We evaluate the accuracy of PULP's models and its effectiveness to achieve the privacy-utility trade-off per user, using four real-world mobility traces of 770 users in total. Our extensive experimentation shows that PULP ensures the contribution to location service while adhering to privacy constraints for a great percentage of users, and is orders of magnitude faster than non-model based alternatives.