Litcius/Paper detail

Cryptographic Primitives in Privacy-Preserving Machine Learning: A Survey

Hong Qin, Debiao He, Qi Feng, Muhammad Khurram Khan, Min Luo, Kim‐Kwang Raymond Choo

2023IEEE Transactions on Knowledge and Data Engineering19 citationsDOI

Abstract

Advances in machine learning have enabled a broad range of complex applications, such as image recognition, recommendation system and machine translation. Data plays an important role in our increasingly complex and diverse environments, and this also reinforces the importance of data privacy in machine learning-enabled applications. Although there are a number of literature survey articles on machine learning, only a few studies have investigated the cryptographic primitives used in privacy-preserving machine learning (PPML). In other words, there is no, or limited, systematization of knowledge (SoK) that provides a comprehensive introduction to cryptography that have been deployed in PPML. In this paper, we firstly introduce some basic concepts such as machine learning tasks and processes. Then, we review and systematize the cryptographic primitives used in PPML. We analyze these existing privacy-preserving schemes in their learning process, especially training and inference. Finally, we conclude our survey and provide an outlook on future trends and research directions in the field.

Topics & Concepts

Computer scienceCryptographyMachine learningCryptographic primitiveArtificial intelligenceInferenceProcess (computing)Machine translationInformation privacyField (mathematics)Cryptographic protocolTheoretical computer scienceComputer securityOperating systemMathematicsPure mathematicsCryptography and Data SecurityPrivacy-Preserving Technologies in DataBlockchain Technology Applications and Security