基于区块链的联邦学习与数据隐私调查

Bipin Chhetri, Saroj Gopali, Rukayat Olapojoye, Samin Dehbashi, A. Namin
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引用次数: 2

摘要

联邦学习是一种分散的机器学习范式,它允许多个客户端通过利用本地计算能力和模型的传输进行协作。这种方法降低了与集中式机器学习方法相关的成本和隐私问题,同时通过跨异构设备分发训练数据来确保数据隐私。另一方面,由于在存储、传输和共享过程中缺乏隐私保护机制,联邦学习具有数据泄露的缺点,从而给数据所有者和供应商带来重大风险。区块链技术已经成为在联邦学习中提供安全数据共享平台的一种有前途的技术,特别是在工业物联网(IIoT)环境中。本调查旨在比较基于区块链的联邦学习架构中采用的各种数据隐私机制的性能和安全性。我们对区块链技术提供的联邦学习安全数据共享平台的现有文献进行了系统回顾,深入概述了基于区块链的联邦学习及其基本组成部分,并讨论了其原理和潜在应用。本调查论文的主要贡献是确定关键的研究问题,并为基于区块链的联邦学习的未来研究提出潜在的方向。
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A Survey on Blockchain-Based Federated Learning and Data Privacy
Federated learning is a decentralized machine learning paradigm that allows multiple clients to collaborate by leveraging local computational power and the model’s transmission. This method reduces the costs and privacy concerns associated with centralized machine learning methods while ensuring data privacy by distributing training data across heterogeneous devices. On the other hand, federated learning has the drawback of data leakage due to the lack of privacy-preserving mechanisms employed during storage, transfer, and sharing, thus posing significant risks to data owners and suppliers. Blockchain technology has emerged as a promising technology for offering secure data-sharing platforms in federated learning, especially in Industrial Internet of Things (IIoT) settings. This survey aims to compare the performance and security of various data privacy mechanisms adopted in blockchain-based federated learning architectures. We conduct a systematic review of existing literature on secure data-sharing platforms for federated learning provided by blockchain technology, providing an in-depth overview of blockchain-based federated learning, its essential components, and discussing its principles, and potential applications. The primary contribution of this survey paper is to identify critical research questions and propose potential directions for future research in blockchain-based federated learning.
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