Privacy-preserving Wi-Fi Analytics

As communications-enabled devices are becoming more ubiquitous, it becomes easier to track the movements of individuals through the radio signals broadcasted by their devices. Thus, while there is a strong interest for physical analytics platforms to leverage this information for many purposes, this...

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Veröffentlicht in:Proceedings on Privacy Enhancing Technologies 2018-04, Vol.2018 (2), p.4-26
Hauptverfasser: Alaggan, Mohammad, Cunche, Mathieu, Gambs, Sébastien
Format: Artikel
Sprache:eng
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Zusammenfassung:As communications-enabled devices are becoming more ubiquitous, it becomes easier to track the movements of individuals through the radio signals broadcasted by their devices. Thus, while there is a strong interest for physical analytics platforms to leverage this information for many purposes, this tracking also threatens the privacy of individuals. To solve this issue, we propose a privacy-preserving solution for collecting mobility patterns while satisfying the strong guarantee of ε-differential privacy. More precisely, we introduce a sanitization mechanism for efficient, privacy-preserving and non-interactive approximate distinct counting for physical analytics based on perturbed Bloom filters called Pan-Private BLIP. We also extend and generalize previous approaches for estimating distinct count of events and joint events ( , intersection and more generally -out-of- cardinalities). Finally, we evaluate expirementally our approach and compare it to previous ones on real datasets.
ISSN:2299-0984
2299-0984
DOI:10.1515/popets-2018-0010