Survey: An Overview on Privacy Preserving Federated Learning in Health Data

IF 2 Q3 TELECOMMUNICATIONS
Manzur Elahi, Hui Cui, Mohammed Kaosar
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引用次数: 1

Abstract

Machine learning now confronts two significant obstacles: the first is data isolation in most organizations' silos, and the second is data privacy and security enforcement. The widespread application of Machine Learning techniques in patient care is currently hampered by limited dataset availability for algorithm training and validation due to the lack of standardised electronic medical records and strict legal and ethical requirements to protect patient privacy. To avoid compromising patient privacy while supporting scientific analysis on massive datasets to improve patient care, it is necessary to analyse and implement Machine Learning solutions that fulfil data security and consumption demands. In this survey paper, we meticulously explain the existing works of federated learning from many perspectives to give a thorough overview and promote future research in this area. Then, we determine the current challenges, attack vectors and potential prospects for federated learning research. We analysed the similarities, differences and advantages between federated learning and other machine learning techniques. We also discussed about system and statistical heterogeneity and related efficient algorithms.
调查:健康数据中隐私保护联邦学习的概述
机器学习现在面临着两个重大障碍:第一个是大多数组织的孤岛中的数据隔离,第二个是数据隐私和安全执行。由于缺乏标准化的电子病历和严格的法律和道德要求来保护患者隐私,机器学习技术在患者护理中的广泛应用目前受到用于算法训练和验证的数据集可用性有限的阻碍。为了在支持对海量数据集进行科学分析以改善患者护理的同时避免损害患者隐私,有必要分析和实施满足数据安全和消费需求的机器学习解决方案。在这篇调查论文中,我们从多个角度对联邦学习的现有工作进行了细致的解释,以给出一个全面的概述,并促进该领域的未来研究。然后,我们确定了当前联邦学习研究的挑战、攻击向量和潜在前景。我们分析了联邦学习与其他机器学习技术的异同和优势。我们还讨论了系统和统计异质性以及相关的高效算法。
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来源期刊
CiteScore
5.30
自引率
5.00%
发文量
18
审稿时长
15 weeks
期刊介绍: The Journal of Computer Networks and Communications publishes articles, both theoretical and practical, investigating computer networks and communications. Articles explore the architectures, protocols, and applications for networks across the full spectrum of sizes (LAN, PAN, MAN, WAN…) and uses (SAN, EPN, VPN…). Investigations related to topical areas of research are especially encouraged, including mobile and wireless networks, cloud and fog computing, the Internet of Things, and next generation technologies. Submission of original research, and focused review articles, is welcomed from both academic and commercial communities.
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