GANIBOT: A Network Flow Based Semi Supervised Generative Adversarial Networks Model for IoT Botnets Detection

K. Saurabh, Ayush Singh, Uphar Singh, O. P. Vyas, M. M. Khondoker
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引用次数: 4

Abstract

The spread of Internet of Things (IoT) devices in our homes, healthcare, industries etc. are more easily infiltrated than desktop computers have resulted in a surge in botnet attacks based on IoT devices, which may jeopardize the IoT security. Hence, there is a need to detect these attacks and mitigate the damage. Existing systems rely on supervised learning-based intrusion detection methods, which require a large labelled data set to achieve high accuracy. Botnets are onerous to detect because of stealthy command & control protocols and large amount of network traffic and hence obtaining a large labelled data set is also difficult. Due to unlabeled Network traffic, the supervised classification techniques may not be used directly to sort out the botnet that is responsible for the attack. To overcome this limitation, a semi-supervised Deep Learning (DL) approach is proposed which uses Semi-supervised GAN (SGAN) for IoT botnet detection on N-BaIoT dataset which contains "Bashlite" and "Mirai" attacks along with their sub attacks. The results have been compared with the state-of-the-art supervised solutions and found efficient in terms of better accuracy which is 99.89% in binary classification and 59% in multi classification on larger dataset, faster and reliable model for IoT Botnet detection.
GANIBOT:基于网络流的半监督生成对抗网络模型,用于物联网僵尸网络检测
物联网(IoT)设备在我们的家庭,医疗保健,工业等领域的普及比台式电脑更容易渗透,导致基于物联网设备的僵尸网络攻击激增,这可能危及物联网安全。因此,有必要检测这些攻击并减轻损害。现有系统依赖于基于监督学习的入侵检测方法,这需要大量标记数据集才能达到高精度。由于僵尸网络具有隐蔽的命令控制协议和大量的网络流量,因此很难检测到僵尸网络,因此很难获得大量的标记数据集。由于未标记的网络流量,监督分类技术可能无法直接用于分类负责攻击的僵尸网络。为了克服这一限制,提出了一种半监督深度学习(DL)方法,该方法使用半监督GAN (SGAN)在N-BaIoT数据集上进行物联网僵尸网络检测,该数据集包含“Bashlite”和“Mirai”攻击及其子攻击。结果与最先进的监督解决方案进行了比较,发现在更高的准确率方面,在较大的数据集上,二进制分类的准确率为99.89%,多分类的准确率为59%,物联网僵尸网络检测的模型更快、更可靠。
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