A Systematic Literature Review of Blockchain-based Federated Learning: Architectures, Applications and Issues

Dongkun Hou, Jie Zhang, K. Man, Jieming Ma, Zitian Peng
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引用次数: 19

Abstract

Federal learning (FL) can realize a distributed training machine learning models in multiple devices while protecting their data privacy, but some defect still exists such as single point failure and lack of motivation. Blockchain as a distributed ledger can be utilized to provide a novel FL framework to address those issues. This paper aims to discuss how the blockchain technology is employed to compensate for shortcomings in FL. A systematic literature review is conducted to investigate existing FL problems and to summarize knowledge about the existing Blockchain-based FL (BFL). The differences among these collected BFL architectures are presented and discussed, and the applications of BFL are categorized and analyzed. Finally, some suggestions for future development and application of BFL are discussed.
基于区块链的联邦学习:架构、应用和问题的系统文献综述
联邦学习(Federal learning, FL)可以在保护数据隐私的前提下,在多个设备上实现对机器学习模型的分布式训练,但也存在单点故障、缺乏动力等缺陷。区块链作为一个分布式账本可以用来提供一个新的FL框架来解决这些问题。本文旨在讨论如何使用区块链技术来弥补FL的缺点。本文进行了系统的文献综述,以调查现有的FL问题,并总结有关现有基于区块链的FL (BFL)的知识。介绍和讨论了所收集的BFL体系结构之间的差异,并对BFL的应用进行了分类和分析。最后,对未来BFL的发展和应用提出了建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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