Paper 2024/1042

Efficient Verifiable Differential Privacy with Input Authenticity in the Local and Shuffle Model

Tariq Bontekoe, University of Groningen
Hassan Jameel Asghar, Macquarie University
Fatih Turkmen, University of Groningen
Abstract

Local differential privacy (LDP) enables the efficient release of aggregate statistics without having to trust the central server (aggregator), as in the central model of differential privacy, and simultaneously protects a client's sensitive data. The shuffle model with LDP provides an additional layer of privacy, by disconnecting the link between clients and the aggregator. However, LDP has been shown to be vulnerable to malicious clients who can perform both input and output manipulation attacks, i.e., before and after applying the LDP mechanism, to skew the aggregator's results. In this work, we show how to prevent malicious clients from compromising LDP schemes. Our only realistic assumption is that the initial raw input is authenticated; the rest of the processing pipeline, e.g., formatting the input and applying the LDP mechanism, may be under adversarial control. We give several real-world examples where this assumption is justified. Our proposed schemes for verifiable LDP (VLDP), prevent both input and output manipulation attacks against generic LDP mechanisms, requiring only one-time interaction between client and server, unlike existing alternatives [37, 43]. Most importantly, we are the first to provide an efficient scheme for VLDP in the shuffle model. We describe, and prove security of, two schemes for VLDP in the local model, and one in the shuffle model. We show that all schemes are highly practical, with client run times of less than 2 seconds, and server run times of 5-7 milliseconds per client.

Metadata
Available format(s)
PDF
Category
Cryptographic protocols
Publication info
Published elsewhere. PETS 2025
Keywords
differential privacyshuffle modelverifiable computing
Contact author(s)
t h bontekoe @ rug nl
hassan asghar @ mq edu au
f turkmen @ rug nl
History
2024-11-19: revised
2024-06-27: received
See all versions
Short URL
https://ia.cr/2024/1042
License
Creative Commons Attribution
CC BY

BibTeX

@misc{cryptoeprint:2024/1042,
      author = {Tariq Bontekoe and Hassan Jameel Asghar and Fatih Turkmen},
      title = {Efficient Verifiable Differential Privacy with Input Authenticity in the Local and Shuffle Model},
      howpublished = {Cryptology {ePrint} Archive, Paper 2024/1042},
      year = {2024},
      url = {https://eprint.iacr.org/2024/1042}
}
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