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BotCop: An Online Botnet Traffic Classifier

机译:BotCop:在线僵尸网络流量分类器

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摘要

A botnet is a network of compromised computers infected with malicious code that can be controlled remotely under a common command and control (C&C) channel. As one the most serious security threats to the Internet, a botnet cannot only be implemented with existing network applications (e.g. IRC, HTTP, or Peer-to-Peer) but also can be constructed by unknown or creative applications, thus making the botnet detection a challenging problem. In this paper, we propose a new online botnet traffic classification system, called BotCop, in which the network traffic are fully classified into different application communities by using payload signatures and a novel decision tree model, and then on each obtained application community, the temporal-frequent characteristic of flows is studied and analyzed to differentiate the malicious communication traffic created by bots from normal traffic generated by human beings. We evaluate our approach with about 30 million flows collected over one day on a large-scale WiFi ISP network and results show that the proposed approach successfully detects an IRC botnet from about 30 million flows with a high detection rate and a low false alarm rate.
机译:僵尸网络是感染了恶意代码的受感染计算机的网络,可以通过通用命令与控制(C&C)通道进行远程控制。作为对互联网的最严重的安全威胁,僵尸网络不仅可以用现有的网络应用程序(例如IRC,HTTP或对等网络)实现,而且可以由未知或有创造力的应用程序构建,从而进行僵尸网络检测一个具有挑战性的问题。在本文中,我们提出了一个新的在线僵尸网络流量分类系统,称为BotCop,该系统通过使用有效负载签名和新颖的决策树模型将网络流量完全分类为不同的应用程序社区,然后在每个获得的应用程序社区上,将时间对流量的频繁特征进行了研究和分析,以区分机器人产生的恶意通信流量和人类产生的正常流量。我们使用大型WiFi ISP网络在一天之内收集了大约3,000万个数据流,对我们的方法进行了评估,结果表明,该方法成功地从大约3000万个数据流中以高检测率和低误报率成功检测到IRC僵尸网络。

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