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Paper 2020/935

Privacy-Preserving Multi-Operator Contact Tracing for Early Detection of Covid19 Contagions

Davide Andreoletti and Omran Ayoub and Silvia Giordano and Massimo Tornatore and Giacomo Verticale

Abstract

The outbreak of coronavirus disease 2019 (covid-19) is imposing a severe worldwide lock-down. Contact tracing based on smartphones' applications (apps) has emerged as a possible solution to trace contagions and enforce a more sustainable selective quarantine. However, a massive adoption of these apps is required to reach the critical mass needed for effective contact tracing. As an alternative, geo-location technologies in next generation networks (e.g., 5G) can enable Mobile Operators (MOs) to perform passive tracing of users' mobility and contacts with a promised accuracy of down to one meter. To effectively detect contagions, the identities of positive individuals, which are known only by a Governmental Authority (GA), are also required. Note that, besides being extremely sensitive, these data might also be critical from a business perspective. Hence, MOs and the GA need to exchange and process users' geo-locations and infection status data in a privacy-preserving manner. In this work, we propose a privacy-preserving protocol that enables multiple MOs and the GA to share and process users' data to make only the final users discover the number of their contacts with positive individuals. The protocol is based on existing privacy-enhancing strategies that guarantee that users' mobility and infection status are only known to their MOs and to the GA, respectively. From extensive simulations, we observe that the cost to guarantee total privacy (evaluated in terms of data overhead introduced by the protocol) is acceptable, and can also be significantly reduced if we accept a negligible compromise in users' privacy.

Metadata
Available format(s)
PDF
Publication info
Preprint. MINOR revision.
Keywords
Mobile OperatorsPrivacyCovid19
Contact author(s)
davide andreoletti @ supsi ch
History
2020-07-29: received
Short URL
https://ia.cr/2020/935
License
Creative Commons Attribution
CC BY
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