Generative AI for Cyber Threat-Hunting in 6G-enabled IoT Networks

M. Ferrag, M. Debbah, M. Al-Hawawreh
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引用次数: 3

Abstract

The next generation of cellular technology, 6G, is being developed to enable a wide range of new applications and services for the Internet of Things (IoT). One of 6G’s main advantages for IoT applications is its ability to support much higher data rates and bandwidth as well as to support ultralow latency. However, with this increased connectivity will come to an increased risk of cyber threats, as attackers will be able to exploit the large network of connected devices. Generative Artificial Intelligence (AI) can be used to detect and prevent cyber attacks by continuously learning and adapting to new threats and vulnerabilities. In this paper, we discuss the use of generative AI for cyber threat-hunting (CTH) in 6G-enabled IoT networks. Then, we propose a new generative adversarial network (GAN) and Transformer-based model for CTH in 6Genabled IoT Networks. The experimental analysis results with a new cyber security dataset demonstrate that the Transformer-based security model for CTH can detect IoT attacks with a high overall accuracy of 95%. We examine the challenges and opportunities and conclude by highlighting the potential of generative AI in enhancing the security of 6G-enabled IoT networks and call for further research to be conducted in this area.
在支持6g的物联网网络中用于网络威胁搜索的生成人工智能
下一代蜂窝技术6G正在开发中,旨在为物联网(IoT)提供广泛的新应用和服务。6G对物联网应用的主要优势之一是它能够支持更高的数据速率和带宽,以及支持超低延迟。然而,随着连接的增加,网络威胁的风险也会增加,因为攻击者将能够利用连接设备的大型网络。生成式人工智能(AI)可以通过不断学习和适应新的威胁和漏洞来检测和预防网络攻击。在本文中,我们讨论了在支持6g的物联网网络中使用生成式人工智能进行网络威胁搜索(CTH)。然后,我们提出了一种新的生成式对抗网络(GAN)和基于变压器的6Genabled IoT网络CTH模型。在新的网络安全数据集上的实验分析结果表明,基于transformer的CTH安全模型可以检测物联网攻击,整体准确率高达95%。我们研究了挑战和机遇,最后强调了生成式人工智能在增强支持6g的物联网网络安全性方面的潜力,并呼吁在这一领域进行进一步的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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