Personalized Privacy-Preserving Framework for Cross-Silo Federated Learning

IF 5.1 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Van-Tuan Tran;Huy-Hieu Pham;Kok-Seng Wong
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Abstract

Federated learning (FL) is recently surging as a promising decentralized deep learning (DL) framework that enables DL-based approaches trained collaboratively across clients without sharing private data. However, in the context of the central party being active and dishonest, the data of individual clients might be perfectly reconstructed, leading to the high possibility of sensitive information being leaked. Moreover, FL also suffers from the nonindependent and identically distributed (non-IID) data among clients, resulting in the degradation in the inference performance on local clients’ data. In this paper, we propose a novel framework, namely Personalized Privacy-Preserving Federated Learning (PPPFL), with a concentration on cross-silo FL to overcome these challenges. Specifically, we introduce a stabilized variant of the Model-Agnostic Meta-Learning (MAML) algorithm to collaboratively train a global initialization from clients’ synthetic data generated by Differential Private Generative Adversarial Networks (DP-GANs). After reaching convergence, the global initialization will be locally adapted by the clients to their private data. Through extensive experiments, we empirically show that our proposed framework outperforms multiple FL baselines on different datasets, including MNIST, Fashion-MNIST, CIFAR-10, and CIFAR-100.
跨ilo 联合学习的个性化隐私保护框架
联邦学习(FL)最近作为一种有前途的去中心化深度学习(DL)框架而蓬勃发展,它使基于DL的方法能够在不共享私有数据的情况下跨客户端进行协作训练。然而,在中心方活跃和不诚实的情况下,个人客户的数据可能会被完美地重构,导致敏感信息泄露的可能性很大。此外,FL还受到客户端之间非独立和同分布(non-IID)数据的影响,导致对本地客户端数据的推理性能下降。在本文中,我们提出了一个新的框架,即个性化隐私保护联邦学习(PPPFL),专注于跨筒仓FL来克服这些挑战。具体来说,我们引入了模型不可知论元学习(MAML)算法的稳定变体,以协同训练由微分私有生成对抗网络(DP-GANs)生成的客户端合成数据的全局初始化。在达到收敛后,全局初始化将由客户端根据其私有数据在本地进行调整。通过广泛的实验,我们实证地表明,我们提出的框架在不同的数据集上优于多个FL基线,包括MNIST、Fashion-MNIST、CIFAR-10和CIFAR-100。
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来源期刊
IEEE Transactions on Emerging Topics in Computing
IEEE Transactions on Emerging Topics in Computing Computer Science-Computer Science (miscellaneous)
CiteScore
12.10
自引率
5.10%
发文量
113
期刊介绍: IEEE Transactions on Emerging Topics in Computing publishes papers on emerging aspects of computer science, computing technology, and computing applications not currently covered by other IEEE Computer Society Transactions. Some examples of emerging topics in computing include: IT for Green, Synthetic and organic computing structures and systems, Advanced analytics, Social/occupational computing, Location-based/client computer systems, Morphic computer design, Electronic game systems, & Health-care IT.
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