基于物联网的医疗网络中使用混合联邦学习的攻击检测

M. Itani, Hanaa S. Basheer, Fouad Eddine
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引用次数: 0

摘要

网络犯罪在全球范围内迅速增加,导致经济损失,并危及私人数据的完整性和机密性。根据网络安全风险投资公司(Cybersecurity Ventures)的一项调查,统计数据显示,2021年网络犯罪导致的损失约为6万亿美元。由于物联网网络被认为是恶意攻击者使用自动化流程实施犯罪行为的可识别数据来源,近年来,机器学习(ML)辅助物联网安全方法受到了广泛关注。传统的机器学习依赖于单个服务器来存储其所有数据,这使得它不太适合关注用户隐私的领域,而基于联邦学习(FL)的异常检测技术利用分散的设备上数据来识别物联网网络入侵,代表了上述问题的建议解决方案。我们提出了一个框架,使用不同的经典机器学习算法和增强的联邦学习模型来训练和测试来自健康网络的物联网数据。FL是一个框架,它通过在客户端使用客户端个人数据进行本地训练,然后通过转发所需的数据来更新中央服务器,从而以迭代的方式不断学习。通过不同的迭代,我们基于准确率、精密度、召回率和f1分数对不同算法的性能进行了评估。为了开发一个强大的检测系统,我们使用了多个数据集并生成了不同的结果。这些结果显示出体面和有希望的准确性,因此使用机器学习技术检测物联网网络上的威胁是远程医疗应用的有希望的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attack Detection in IoT-Based Healthcare Networks Using Hybrid Federated Learning
Cybercrimes are increasing rapidly throughout the world, leading to financial losses and compromising the integrity and confidentiality of private data. Statistics showed that cybercrimes led to losses of around $6 trillion in 2021 based on a survey by Cybersecurity Ventures. Knowing that IoT networks are considered a source of identifiable data for vicious attackers to carry out criminal actions using automated processes, machine learning (ML)-assisted methods for IoT security have gained much attention in recent years. While conventional ML relies on a single server to store all of its data, which makes it a less desirable option for domains concerned about user privacy, the Federated Learning (FL)-based anomaly detection technique, which utilizes decentralized on-device data to identify IoT network intrusions, represents the proposed solution to the aforementioned problem. We propose a framework to train and test IoT data from health network using different classical machine learning algorithms and an enhanced federated learning model. FL is a framework that learns continuously in an iterative manner by training locally at the client side with the clientś individual data, and then updating the central server by forwarding the required data. We evaluated the performance of different algorithms based on accuracy, precision, recall and F1-score via different iterations. To develop a strong detection system, we used multiple datasets and generated different results. These results show decent and promising accuracy hence a promising solution towards telehealth application using machine learning techniques in detecting threats on IoT networks.
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