利用监督学习检测物联网中的指挥与控制攻击

M. AlShaikh, Waleed Alsemaih, Sultan Alamri, Qusai Ramadan
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摘要

物联网(IoT)设备的迅速普及开创了技术发展的新时代。然而,这种增长也使这些设备面临各种网络安全风险,包括指挥与控制(C&C)攻击。C&C 攻击涉及未经授权的实体控制物联网设备开展恶意活动。传统的网络安全措施往往无法应对这些不断变化的威胁。为加强物联网安全并应对 C&C 威胁,本研究探讨了机器学习的一个子领域--监督学习的潜力。监督学习是一种利用过去的数据来训练机器学习模型的方法,这种模型能够实时独立识别表明 C&C 威胁的模式,为物联网网络提供额外的保护。本文深入探讨了这种方法的优点和缺点,并考虑了一些因素,如需要定义明确的标记数据集、物联网设备的资源限制以及围绕数据安全的道德考虑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Supervised Learning to Detect Command and Control Attacks in IoT
The rapid proliferation of internet of things (IoT) devices has ushered in a new era of technological development. However, this growth has also exposed these devices to various cybersecurity risks, including command and control (C&C) attacks. C&C attacks involve unauthorized entities taking control of IoT devices to carry out malicious activities. Traditional cybersecurity measures often fall short in addressing these evolving threats. To enhance IoT security and counter C&C threats, this study explores the potential of supervised learning, a subfield of machine learning. Supervised learning, a method that utilizes past data to train machine learning models capable of independently identifying patterns indicative of C&C threats in real time, offers additional protection to IoT networks. This article delves into the advantages and drawbacks of this approach, considering factors such as the need for well-defined labeled datasets, resource constraints of IoT devices, and ethical considerations surrounding data security.
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