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Federated learning for 6G communications: Challenges, methods, and future directions

机译:联合学习6G通信:挑战,方法和未来方向

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摘要

As the 50 communication networks are being widely deployed worldwide, both industry and academia have started to move beyond 50 and explore 6G communications. It is generally believed that 6G will be established on ubiquitous Artificial Intelligence (AI) to achieve data-driven Machine Learning (ML) solutions in heterogeneous and massive-scale networks. However, traditional ML techniques require centralized data collection and processing by a central server, which is becoming a bottleneck of large-scale implementation in daily life due to significantly increasing privacy concerns. Federated learning, as an emerging distributed AI approach with privacy preservation nature, is particularly attractive for various wireless applications, especially being treated as one of the vital solutions to achieve ubiquitous AI in 6G. In this article, we first introduce the integration of 6G and federated learning and provide potential federated learning applications for 6G. We then describe key technical challenges, the corresponding federated learning methods, and open problems for future research on federated learning in the context of 6G communications.
机译:由于50个通信网络在全球范围内广泛部署,行业和学术界都开始超越50并探索6G通信。人们普遍认为,将在普遍存在的人工智能(AI)上建立6G,以实现异构和大规模网络中的数据驱动机器学习(ML)解决方案。然而,传统的ML技术需要由中央服务器集中数据收集和处理,这是日常生活中大规模实施的瓶颈,因为由于隐私问题显着增加了。联邦学习作为一种具有隐私保存性质的新兴分布式AI方法,对各种无线应用特别有吸引力,特别是被视为在6G中实现普遍AI的重要解决方案之一。在本文中,我们首先介绍了6G和联合学习的集成,并为6G提供潜在的联合学习应用。然后,我们描述了关键的技术挑战,相应的联邦学习方法,以及在6G通信的背景下对联合学习的未来研究的开放问题。

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