基于流量的k近邻僵尸网络识别

D. Gunawan, Tika Hairani, A. Hizriadi
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引用次数: 0

摘要

个人数据是网络犯罪的主要目标。机器人网络或缩写为僵尸网络是一种感染计算机并允许僵尸网络所有者控制被感染计算机的程序。僵尸网络可以被控制来窃取受感染计算机的个人数据,以及使用计算机进行其他网络犯罪目的。本研究旨在利用k -最近邻(KNN)识别流量中的僵尸网络。流量流量数据源来源于CTU-13数据集,该数据集包含捷克工业大学捕获的真实流量。因此,根据场景和k值的不同,僵尸网络识别准确率在75.84% ~ 97.27%之间。虽然KNN显示了良好的精度结果,但其他几种方法的精度优于KNN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Botnet Identification Based on Flow Traffic by Using K-Nearest Neighbor
Personal data is the primary target of cybercrime. Robot network or abbreviated as botnet is a program that infects the computers and allows the botnet owner to control the infected computers. The botnet can be controlled to steal personal data of the infected computers, as well as using the computer to other cybercrime purposes. This research aims to identify the botnet in the flow traffic by using K-Nearest Neighbor (KNN). The flow traffic data source is obtained from CTU-13 datasets, which contain the real flow traffic captured by Czech Technical University. As a result, the botnet identification accuracy lies in the range of 75.84% to 97.27%, depends on the scenario and the k value. Although KNN has shown a good accuracy result, several other methods outperform KNN accuracy.
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