Litcius/Paper detail

Privacy-Preserving Asynchronous Federated Learning Under Non-IID Settings

Yinbin Miao, Da Kuang, Xinghua Li, Shujiang Xu, Hongwei Li, Kim‐Kwang Raymond Choo, Robert H. Deng

2024IEEE Transactions on Information Forensics and Security14 citationsDOIOpen Access PDF

Abstract

To address the challenges posed by data silos and heterogeneity in distributed machine learning, privacy-preserving asynchronous Federated Learning (FL) has been extensively explored in academic and industrial fields. However, existing privacy-preserving asynchronous FL schemes still suffer from the problem of low model accuracy caused by inconsistency between delayed model updates and current model updates, and even cannot adapt well to Non-Independent and Identically Distributed (Non-IID) settings. To address these issues, we propose a Privacy-preserving Asynchronous Federated Learning based on the alternating direction multiplier method (PAFed), which is able to achieve high-accuracy models in Non-IID settings. Specifically, we utilize vector projection techniques to correct the inconsistency between delayed model updates and current model updates, thereby reducing the impact of delayed model updates on the aggregation of current model updates. Additionally, we employ an optimization method based on alternating direction multipliers to adapt the Non-IID settings to further enhance the global model accuracy. Finally, through extensive experiments, we demonstrate that our scheme improves the model accuracy by up to 12.53% when compared with current state-of-the-art solution FedADMM.

Topics & Concepts

Computer scienceAsynchronous communicationInformation privacyAsynchronous learningComputer securityComputer networkSynchronous learningPolitical scienceCooperative learningTeaching methodLawPrivacy-Preserving Technologies in DataCryptography and Data SecurityStochastic Gradient Optimization Techniques
Privacy-Preserving Asynchronous Federated Learning Under Non-IID Settings | Litcius