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Samplable Anonymous Aggregation for Private Federated Data Analysis

27 July 2023
Kunal Talwar
Shan Wang
Audra McMillan
Vojta Jina
Vitaly Feldman
Pansy Bansal
Bailey E. Basile
Áine Cahill
Yi Sheng Chan
Mike Chatzidakis
Junye Chen
Oliver R. A. Chick
Mona Chitnis
Suman Ganta
Yusuf Goren
Filip Granqvist
Kristine Guo
Frederic Jacobs
O. Javidbakht
Albert Liu
R. Low
Daniel T. Mascenik
Steve Myers
David Park
Wonhee Park
Gianni Parsa
T. Pauly
Christian Priebe
Rehan Rishi
G. Rothblum
Michael Scaria
Linmao Song
Congzheng Song
Karl Tarbe
Sebastian Vogt
L. Winstrom
    FedML
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Abstract

We revisit the problem of designing scalable protocols for private statistics and private federated learning when each device holds its private data. Our first contribution is to propose a simple primitive that allows for efficient implementation of several commonly used algorithms, and allows for privacy accounting that is close to that in the central setting without requiring the strong trust assumptions it entails. Second, we propose a system architecture that implements this primitive and perform a security analysis of the proposed system.

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