In recent years, malware detection has become an active research topic in the area of Internet of Things (IoT) security. The principle is to exploit knowledge from large quantities of continuously generated malware. Existing algorithms practice available malware features for IoT devices and lack real-time prediction behaviors. More research is thus required on malware detection to cope with real-time misclassification of the input IoT data. Motivated by this, in this paper we propose an adversarial self-supervised architecture for detecting malware in IoT networks, SETTI, considering samples of IoT network traffic that may not be labeled. In the SETTI architecture, we design three self-supervised attack techniques, namely Self-MDS, GSelf-MDS and ASelf-MDS. The Self-MDS method considers the IoT input data and the adversarial sample generation in real-time. The GSelf-MDS builds a generative adversarial network model to generate adversarial samples in the self-supervised structure. Finally, ASelf-MDS utilizes three well-known perturbation sample techniques to develop adversarial malware and inject it over the self-supervised architecture. Also, we apply a defence method to mitigate these attacks, namely adversarial self-supervised training to protect the malware detection architecture against injecting the malicious samples. To validate the attack and defence algorithms, we conduct experiments on two recent IoT datasets: IoT23 and NBIoT. Comparison of the results shows that in the IoT23 dataset, the Self-MDS method has the most damaging consequences from the attacker's point of view by reducing the accuracy rate from 98% to 74%. In the NBIoT dataset, the ASelf-MDS method is the most devastating algorithm that can plunge the accuracy rate from 98% to 77%.
翻译:近些年来,恶意软件检测已成为互联网上物品安全领域一个积极的研究课题。原则是利用大量不断生成的恶意软件的知识。现有的算法为 Iot设备操作了三种可使用的恶意软件功能,缺乏实时预测行为。因此,需要进一步研究恶意软件检测,以应对输入的 Iot数据实时分类错误。受此启发,在本文件中,我们提议建立一个对抗性自我监督架构,用于检测IoT网络中的恶意软件,SETTI,考虑IOT网络流量的样本,这些样本可能不会被贴上标签。在SETTI结构中,我们设计了三种自我监督的攻击技术,即自定义MDS、G-MDS和AF-MDS。自定义方法考虑IO输入数据和实时生成的对抗性样本数据。自定义MDS构建了一个自定义网络模型,通过自定义的网络网络模型生成了自定义的对抗性测试样本。最后,自定义MDMDS在自定义的自我测试中使用了三种广为人知的自我监督的自我监督的自我测试方法,也应用了这些自定义的自我测试数据比率数据比率,我们用来保护了自定义的自我测试系统。自定义的自我测试系统。