Litcius/Paper detail

Differentially private knowledge transfer for federated learning

Tao Qi, Fangzhao Wu, Chuhan Wu, Liang He, Yongfeng Huang, Xing Xie

2023Nature Communications51 citationsDOIOpen Access PDF

Abstract

Extracting useful knowledge from big data is important for machine learning. When data is privacy-sensitive and cannot be directly collected, federated learning is a promising option that extracts knowledge from decentralized data by learning and exchanging model parameters, rather than raw data. However, model parameters may encode not only non-private knowledge but also private information of local data, thereby transferring knowledge via model parameters is not privacy-secure. Here, we present a knowledge transfer method named PrivateKT, which uses actively selected small public data to transfer high-quality knowledge in federated learning with privacy guarantees. We verify PrivateKT on three different datasets, and results show that PrivateKT can maximally reduce 84% of the performance gap between centralized learning and existing federated learning methods under strict differential privacy restrictions. PrivateKT provides a potential direction to effective and privacy-preserving knowledge transfer in machine intelligent systems.

Topics & Concepts

Computer scienceDifferential privacyRaw dataTransfer of learningFederated learningENCODEKnowledge transferInformation privacyKnowledge extractionQuality (philosophy)Big dataMachine learningArtificial intelligenceData miningKnowledge managementComputer securityChemistryPhilosophyGeneBiochemistryProgramming languageEpistemologyPrivacy-Preserving Technologies in DataStochastic Gradient Optimization TechniquesTraffic Prediction and Management Techniques