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Differential Privacy Amplification in Quantum and Quantum-inspired Algorithms

Authors :
Angrisani, Armando
Doosti, Mina
Kashefi, Elham
Angrisani, Armando
Doosti, Mina
Kashefi, Elham
Publication Year :
2022

Abstract

Differential privacy provides a theoretical framework for processing a dataset about $n$ users, in a way that the output reveals a minimal information about any single user. Such notion of privacy is usually ensured by noise-adding mechanisms and amplified by several processes, including subsampling, shuffling, iteration, mixing and diffusion. In this work, we provide privacy amplification bounds for quantum and quantum-inspired algorithms. In particular, we show for the first time, that algorithms running on quantum encoding of a classical dataset or the outcomes of quantum-inspired classical sampling, amplify differential privacy. Moreover, we prove that a quantum version of differential privacy is amplified by the composition of quantum channels, provided that they satisfy some mixing conditions.<br />Comment: This article is superseded by arXiv:2307.04733

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1333755289
Document Type :
Electronic Resource