基于物联网的网络攻击发现与组合分类器

Vanya Ivanova, T. Tashev, I. Draganov
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引用次数: 0

摘要

本文遵循基于物联网的网络攻击发现的最新趋势,并进一步推进我们之前的研究,其中我们优化和测试了单个神经网络,支持向量机和随机森林分类器对多个DDoS攻击的检测和识别,我们提出了新开发的组合分类器的结果。前者仅使用神经网络和随机森林分类器,而后者则额外使用支持向量机。两者都通过两种修改实现——作为恶意流量与正常流量的检测器,以及作为10种攻击与非攻击样本的分类器。在流行的Bot-IoT数据集上获得了很高的分类精度,并且比单一分类器的分类精度更高。同时,它也高于其他解决方案,在实践中提出。
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IoT-based Network Attacks Discovery with Combined Classifiers
In this paper following the recent trends in IoT-based network attacks discovery and advancing further our previous research, in which we optimize and test single neural network, support vector machine and random forest classifiers for both the detection and recognition of multiple DDoS attacks, we propose results from newly developed combined classifiers. The first of them employs only a neural network and a random forest classifier, while the second use additionally a support vector machine. Both are implemented in two modifications – as detectors of malicious vs. normal traffic, and as classifiers of 10 types of attacks vs. non-attack samples. High classification accuracy is being obtained over the popular Bot-IoT dataset and it prove higher than that of the single classifiers. At the same time, it is also higher than other solutions, proposed in the practice.
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来源期刊
International Journal of Circuits, Systems and Signal Processing
International Journal of Circuits, Systems and Signal Processing Engineering-Electrical and Electronic Engineering
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155
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