The Effect of False Positives: Why Fuzzy Message Detection Leads to Fuzzy Privacy Guarantees?

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Abstract

Fuzzy Message Detection (FMD) is a recent cryptographic primitive invented by Beck et al. (CCS’21) where an untrusted server performs coarse message filtering for its clients in a recipient-anonymous way. In FMD—besides the true positive messages—the clients download from the server their cover messages determined by their false-positive detection rates. What is more, within FMD, the server cannot distinguish between genuine and cover traffic. In this paper, we formally analyze the privacy guarantees of FMD from three different angles. First, we analyze three privacy provisions offered by FMD: recipient unlinkability, relationship anonymity, and temporal detection ambiguity. Second, we perform a differential privacy analysis and coin a relaxed definition to capture the privacy guarantees FMD yields. Finally, we simulate FMD on real-world communication data. Our theoretical and empirical results assist FMD users in adequately selecting their false-positive detection rates for various applications with given privacy requirements.

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APA

Seres, I. A., Pejó, B., & Burcsi, P. (2022). The Effect of False Positives: Why Fuzzy Message Detection Leads to Fuzzy Privacy Guarantees? In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 13411 LNCS, pp. 123–148). Springer Science and Business Media Deutschland GmbH. https://doi.org/10.1007/978-3-031-18283-9_7

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