基于机器学习的物联网僵尸网络检测降维方法

Susanto, D. Stiawan, M. Arifin, J. Rejito, Mohd Yazid Bin Idris, R. Budiarto
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引用次数: 1

摘要

物联网(IoT)技术在工业或日常生活中的应用正在大幅提高。这种改进吸引了黑客进行网络攻击,其中一个是僵尸网络。僵尸网络威胁之一是破坏网络并拒绝为物联网设备提供服务。因此,迫切需要一个可靠的检测系统来保证安全。机器学习是以往研究工作中广泛使用的一种检测方法。然而,机器学习的性能问题需要更多的关注,特别是对于具有高可扩展性的数据。在本文中,我们对随机投影降维方法进行了实验,以提高机器学习性能来检测僵尸网络物联网。实验结果表明,结合决策树的随机投影方法能够在8.44秒内检测到物联网僵尸网络,准确率达到100%,假阳性率非常低(接近于0)。
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A Dimensionality Reduction Approach for Machine Learning Based IoT Botnet Detection
The use of Internet of Thing (IoT) technology in industry or daily lives are improving massively. This improvement attracts hackers to perform cyber attack which one of them is botnet. One of the botnet threat is disrupting network and denial service to IoT devices. Therefore, a reliable detection system to keep the security is required urgently. One of the detection method which has been widely used by previous research works is machine learning. However, performance problem on machine learning needs more attention, especially for data with high scalability. In this paper, we conduct experiments on random projection dimensionality reduction approach to boost the machine learning performance to detect botnet IoT. Experiment results show random projection method combined with decision tree is able to detect IoT botnet within 8.44 seconds with accuracy of 100% and very low false positive rate (close to 0).
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