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Privacy-Preserving Polynomial Computing Over Distributed Data

17 September 2023
Zhiquan Tan
Dingli Yuan
Zhongyi Huang
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Abstract

In this letter, we delve into a scenario where a user aims to compute polynomial functions using their own data as well as data obtained from distributed sources. To accomplish this, the user enlists the assistance of NNN distributed workers, thereby defining a problem we refer to as privacy-preserving polynomial computing over distributed data. To address this challenge, we propose an approach founded upon Lagrange encoding. Our method not only possesses the ability to withstand the presence of stragglers and byzantine workers but also ensures the preservation of security. Specifically, even if a coalition of XXX workers collude, they are unable to acquire any knowledge pertaining to the data originating from the distributed sources or the user.

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