物联网网络攻击检测:利用图学习增强安全性

Mohamed-Lamine Messai, H. Seba
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引用次数: 0

摘要

物联网网络是网络犯罪分子最喜欢的目标。随着越来越多的物联网设备连接,物联网网络提供了巨大的攻击面。在这些网络中,网络罪犯有许多潜在的进入点。因此,攻击检测是保护物联网网络的重要组成部分,并保护它们免受成功攻击可能造成的潜在伤害或损害。在本文中,我们提出了一个基于图的框架来检测物联网网络中的攻击。我们的方法包括构造一个活动图来表示监视窗口期间发生的网络事件。该图是一个从网络流量中捕获结构和语义特征的富属性图。然后,我们在这个图上训练一个神经网络来区分正常活动和攻击。我们的初步实验表明,当监控窗口的大小设置正确时,我们的方法能够准确地检测到大范围的攻击。
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IoT Network Attack Detection: Leveraging Graph Learning for Enhanced Security
IoT networks are the favorite target of cybercriminals. With more and more connected IoT devices, IoT networks offer large attack surface. There are many potential entry points for cybercriminals in these networks. Hence, attack detection is an essential part of securing IoT networks and protecting them against the potential harm or damage that can result from successful attacks. In this paper, we propose a graph-based framework for detecting attacks in IoT networks. Our approach involves constructing an activity graph to represent the networking events occurring during a monitoring window. This graph is a rich attributed graph capturing both structure and semantic features from the network traffic. Then, we train a neural network on this graph to distinguish between normal activities and attacks. Our preliminary experiments show that our approach is able to accurately detect a large range of attacks when the size of the monitoring window is correctly set.
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