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CC-Tracker: Interaction Profiling Bipartite Graph Mining for Malicious Network Activity Detection

机译:CC-Tracker:交互分析双向图挖掘,用于恶意网络活动检测

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Malicious domain names are useful for cybercrime, but can be easily blocked by blacklists. To avoid a single point of failure, cybercriminals use domain generation algorithm to generate a large number of malicious domains. Once the victim's machine is infected with malware, the malware tends to connect to malicious domain names to commit cybercrimes, such as waiting for remote control commands or sending malware feedback. Therefore, how to detect these malicious connections has been a hot research topic in information security. In this paper, a new method of tracking malicious domain and victim machine by scalability system named CC-Tracker (Cyber Criminal Tracker) based on HTTP is presented. CC-Tracker extracts 12 features from HTTP traffic using MapReduce framework based Interaction Profiling Bipartite Graph mining. Experimental results show that CC-Tracker can reach 99% AUC in the evaluation benchmark. In addition in the deployment environment found new malicious domain of network traffic, and dig out the hidden in the enterprise, the victims of the machine these malicious domain are a threat to other online reputation system can't identify. The scalability and applicability of CC-Tracker are demonstrated by experiments on the real-world environment.
机译:恶意域名对于网络犯罪很有用,但很容易被黑名单阻止。为了避免单点故障,网络犯罪分子使用域生成算法来生成大量恶意域。一旦受害者的机器感染了恶意软件,该恶意软件就会连接到恶意域名,以实施网络犯罪,例如等待远程控制命令或发送恶意软件反馈。因此,如何检测这些恶意连接已成为信息安全领域的研究热点。本文提出了一种基于HTTP的可扩展系统CC-Tracker(Cyber​​ Crime Tracker)跟踪恶意域和受害者计算机的新方法。 CC-Tracker使用基于MapReduce框架的Interaction Profiling Bipartite Graph挖掘从HTTP流量中提取12个功能。实验结果表明,CC-Tracker在评估基准中可以达到99%的AUC。另外在部署环境中发现了新的恶意域网络流量,并挖出了隐藏在企业中的,这些机器恶意域的受害者,这些威胁是其他在线信誉系统无法识别的。 CC-Tracker的可扩展性和适用性通过在实际环境中进行的实验得到证明。

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