确保联合学习:方法、机制和机遇

IF 2.6 3区 工程技术 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Electronics Pub Date : 2024-09-16 DOI:10.3390/electronics13183675
Mohammad Moshawrab, Mehdi Adda, Abdenour Bouzouane, Hussein Ibrahim, Ali Raad
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引用次数: 0

摘要

凭借分析数据的能力,人工智能技术及其分支使困难的任务变得更加容易。现在,这些技术的工具几乎应用于生活的方方面面。例如,机器学习(ML)作为人工智能的一个分支,已成为工业、教育、医疗保健和其他学科研究人员关注的焦点,并被证明在回答各种问题时与专家一样有效,甚至在某些情况下优于专家。然而,阻碍人工智能发展的障碍仍在探索之中,而联邦学习(FL)被认为是解决隐私和保密问题的一种方法。在联邦学习方法中,用户在整个学习过程中都不会公开自己的数据,从而提高了隐私性和安全性。在本文中,我们将探讨 FL 的安全和隐私概念及其面临的威胁和攻击。我们还讨论了 FL 聚合程序中使用的安全措施。此外,我们还研究和讨论了使用同态加密来保护 FL 数据交换以及其他安全策略。最后,我们讨论了 FL 中的安全和隐私概念,以及在此背景下还可以做出哪些改进来提高 FL 算法的效率。
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Securing Federated Learning: Approaches, Mechanisms and Opportunities
With the ability to analyze data, artificial intelligence technology and its offshoots have made difficult tasks easier. The tools of these technologies are now used in almost every aspect of life. For example, Machine Learning (ML), an offshoot of artificial intelligence, has become the focus of interest for researchers in industry, education, healthcare and other disciplines and has proven to be as efficient as, and in some cases better than, experts in answering various problems. However, the obstacles to ML’s progress are still being explored, and Federated Learning (FL) has been presented as a solution to the problems of privacy and confidentiality. In the FL approach, users do not disclose their data throughout the learning process, which improves privacy and security. In this article, we look at the security and privacy concepts of FL and the threats and attacks it faces. We also address the security measures used in FL aggregation procedures. In addition, we examine and discuss the use of homomorphic encryption to protect FL data exchange, as well as other security strategies. Finally, we discuss security and privacy concepts in FL and what additional improvements could be made in this context to increase the efficiency of FL algorithms.
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来源期刊
Electronics
Electronics Computer Science-Computer Networks and Communications
CiteScore
1.10
自引率
10.30%
发文量
3515
审稿时长
16.71 days
期刊介绍: Electronics (ISSN 2079-9292; CODEN: ELECGJ) is an international, open access journal on the science of electronics and its applications published quarterly online by MDPI.
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