Litcius/Paper detail

A Verifiable Privacy-Preserving Machine Learning Prediction Scheme for Edge-Enhanced HCPSs

Xiong Li, Jiabei He, Pandi Vijayakumar, Xiaosong Zhang, Victor Chang

2021IEEE Transactions on Industrial Informatics57 citationsDOI

Abstract

As a highly integrated industrial system, human cyber-physical systems (HCPSs) provide accurate and high-quality services for Industry 5.0. In HCPSs, machine learning (ML) prediction provides reliable prediction results for users based on matured models, while security and privacy protection are considerable issues. In this article, based on the modified Okamoto–Uchiyama homomorphic encryption, we propose a verifiable privacy-preserving machine learning prediction scheme for the edge-enhanced HCPSs, which outputs the verifiable prediction results for users without privacy leakage. Specifically, a batch of prediction results can be verified at one time, which improves the efficiency of verification. Security analysis shows that our scheme protects the privacy of inputs, ML model, and prediction results. The experiment results demonstrate that the edge computing architecture remarkably alleviates the computational burden of the cloud server. Furthermore, compared with other related schemes, our scheme shows the best execution efficiency, and batch verification optimizes the performance by about 15% compared with single verification on the same scale.

Topics & Concepts

Computer scienceVerifiable secret sharingHomomorphic encryptionCloud computingScheme (mathematics)EncryptionEnhanced Data Rates for GSM EvolutionInformation privacyMachine learningArtificial intelligenceComputer engineeringEmbedded systemDistributed computingComputer securityOperating systemSet (abstract data type)Programming languageMathematicsMathematical analysisPrivacy-Preserving Technologies in DataCryptography and Data SecurityCloud Data Security Solutions