Hiding in the Crowd: A Massively Distributed Algorithm for Private Averaging with Malicious Adversaries

Pierre Dellenbach 1 Aurélien Bellet 1 Jan Ramon 1
1 MAGNET - Machine Learning in Information Networks
Inria Lille - Nord Europe, CRIStAL - Centre de Recherche en Informatique, Signal et Automatique de Lille (CRIStAL) - UMR 9189
Abstract : The amount of personal data collected in our everyday interactions with connected devices offers great opportunities for innovative services fueled by machine learning, as well as raises serious concerns for the privacy of individuals. In this paper, we propose a massively distributed protocol for a large set of users to privately compute averages over their joint data, which can then be used to learn predictive models. Our protocol can find a solution of arbitrary accuracy, does not rely on a third party and preserves the privacy of users throughout the execution in both the honest-but-curious and malicious adversary models. Specifically, we prove that the information observed by the adversary (the set of maliciours users) does not significantly reduce the uncertainty in its prediction of private values compared to its prior belief. The level of privacy protection depends on a quantity related to the Laplacian matrix of the network graph and generally improves with the size of the graph. Furthermore, we design a verification procedure which offers protection against malicious users joining the service with the goal of manipulating the outcome of the algorithm.
Complete list of metadatas

Cited literature [16 references]  Display  Hide  Download

https://hal.inria.fr/hal-01923000
Contributor : Aurélien Bellet <>
Submitted on : Wednesday, November 14, 2018 - 7:18:38 PM
Last modification on : Friday, March 22, 2019 - 1:37:06 AM
Long-term archiving on : Friday, February 15, 2019 - 4:57:02 PM

File

1803.09984.pdf
Files produced by the author(s)

Identifiers

  • HAL Id : hal-01923000, version 1

Citation

Pierre Dellenbach, Aurélien Bellet, Jan Ramon. Hiding in the Crowd: A Massively Distributed Algorithm for Private Averaging with Malicious Adversaries. [Research Report] Inria. 2018. ⟨hal-01923000⟩

Share

Metrics

Record views

51

Files downloads

35