An analysis of network traffic classification for botnet detection

Matija Stevanovic, J. Pedersen
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引用次数: 45

Abstract

Botnets represent one of the most serious threats to the Internet security today. This paper explores how network traffic classification can be used for accurate and efficient identification of botnet network activity at local and enterprise networks. The paper examines the effectiveness of detecting botnet network traffic using three methods that target protocols widely considered as the main carriers of botnet Command and Control (C&C) and attack traffic, i.e. TCP, UDP and DNS. We propose three traffic classification methods based on capable Random Forests classifier. The proposed methods have been evaluated through the series of experiments using traffic traces originating from 40 different bot samples and diverse non-malicious applications. The evaluation indicates accurate and time-efficient classification of botnet traffic for all three protocols. The future work will be devoted to the optimization of traffic analysis and the correlation of findings from the three analysis methods in order to identify compromised hosts within the network.
针对僵尸网络检测的网络流量分类分析
僵尸网络是当今互联网安全面临的最严重威胁之一。本文探讨了如何使用网络流量分类来准确有效地识别本地和企业网络中的僵尸网络活动。本文使用三种方法检测僵尸网络流量的有效性,这些方法针对被广泛认为是僵尸网络命令与控制(C&C)和攻击流量的主要载体的协议,即TCP, UDP和DNS。本文提出了三种基于随机森林分类器的流量分类方法。通过使用来自40个不同的机器人样本和各种非恶意应用程序的流量痕迹的一系列实验,对所提出的方法进行了评估。评估结果表明,这三种协议对僵尸网络流量进行了准确和高效的分类。未来的工作将致力于流量分析的优化和三种分析方法结果的相关性,以识别网络中受损的主机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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