值得信赖的边缘智能去中心化协作学习:一项调查

IF 3.2 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Dongxiao Yu , Zhenzhen Xie , Yuan Yuan , Shuzhen Chen , Jing Qiao , Yangyang Wang , Yong Yu , Yifei Zou , Xiao Zhang
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引用次数: 0

摘要

边缘智能是一种新兴技术,可以在数据源附近的连接系统和设备上实现人工智能。去中心化协同学习(DCL)是一种新型的边缘智能技术,它允许分布式客户端在不泄露数据的情况下合作训练全局学习模型。DCL在智能城市、自动驾驶等各个领域有着广泛的应用。然而,DCL在确保其可信度方面面临重大挑战,因为数据隔离和隐私问题使DCL系统容易受到旨在破坏系统机密性、破坏学习可靠性或侵犯数据隐私的对抗性攻击。因此,以一种值得信赖的方式设计DCL,重点关注安全性、健壮性和隐私性,这一点至关重要。在这项调查中,我们从安全性、鲁棒性和隐私性这三个关键方面对设计值得信赖的DCL系统的现有努力进行了全面的回顾。我们分析了在不同场景中影响DCL可信度的威胁,并评估了实现可信DCL(TDCL)各个方面的具体技术解决方案。最后,我们强调了推进TDCL研究和实践的开放挑战和未来方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trustworthy decentralized collaborative learning for edge intelligence: A survey

Edge intelligence is an emerging technology that enables artificial intelligence on connected systems and devices in close proximity to the data sources. decentralized collaborative learning (DCL) is a novel edge intelligence technique that allows distributed clients to cooperatively train a global learning model without revealing their data. DCL has a wide range of applications in various domains, such as smart city and autonomous driving. However, DCL faces significant challenges in ensuring its trustworthiness, as data isolation and privacy issues make DCL systems vulnerable to adversarial attacks that aim to breach system confidentiality, undermine learning reliability or violate data privacy. Therefore, it is crucial to design DCL in a trustworthy manner, with a focus on security, robustness, and privacy. In this survey, we present a comprehensive review of existing efforts for designing trustworthy DCL systems from the three key aformentioned aspects: security, robustness, and privacy. We analyze the threats that affect the trustworthiness of DCL across different scenarios and assess specific technical solutions for achieving each aspect of trustworthy DCL (TDCL). Finally, we highlight open challenges and future directions for advancing TDCL research and practice.

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