An Innovative Hashgraph-based Federated Learning Approach for Multi Domain 5G Network Protection

H. Kholidy, Riaad Kamaludeen
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引用次数: 3

Abstract

Federated Learning (FL) is a decentralized learning approach, meaning it learns from data housed locally on devices such as tablets, cellular phones, and more, and does not collect nor transfer user-sensitive data but merely learns from the data utilizing a shared model and sending periodical updates. Using federated learning throws out the problems associated with user privacy and the high bandwidth needed to transmit resource-intensive files to a central server for training. However, FL systems may be compromised to make a wrong decision or disclose private data once the attacker modifies the FL model and/or its paraments. The main contribution of this paper includes (1) introducing a comprehensive study that explores the FL and how it applies to different domains like healthcare and medicine, Insurance and Finance, Robotics and Autonomous Systems, Virtual Reality, and 5G. (2) Develop a Hashgraph-based federated learning Approach (HFLA) to protect the 5G network against poisoning and membership inherence attacks. The HFLA was evaluated using our Federated 5G testbed and proved its superiority compared to other existing FL approaches.
一种创新的基于哈希图的多域5G网络保护联邦学习方法
联邦学习(FL)是一种分散的学习方法,这意味着它从本地设备(如平板电脑、手机等)上的数据中学习,并且不收集或传输用户敏感数据,而只是利用共享模型从数据中学习并定期发送更新。使用联邦学习解决了与用户隐私和将资源密集型文件传输到中央服务器进行训练所需的高带宽相关的问题。然而,一旦攻击者修改FL模型和/或其参数,FL系统可能会做出错误的决定或泄露私人数据。本文的主要贡献包括:(1)介绍了一项全面的研究,探讨了FL及其如何应用于不同的领域,如医疗保健和医药、保险和金融、机器人和自主系统、虚拟现实和5G。(2)开发基于哈希图的联邦学习方法(HFLA),保护5G网络免受中毒攻击和成员固有攻击。HFLA使用我们的联邦5G测试平台进行了评估,并证明了其与其他现有FL方法相比的优势。
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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