deMSF: a Method for Detecting Malicious Server Flocks for Same Campaign

Yixin Li, Liming Wang, Jing Yang, Zhen Xu, Xi Luo
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Abstract

Nowadays, cybercriminals tend to leverage dynamic malicious infrastructures with multiple servers to conduct attacks, such as malware distribution and control. Compared with a single server, employing multiple servers allows crimes to be more efficient and stealthy. As the necessary role infrastructures play, many approaches have been proposed to detect malicious servers. However, many existing methods typically target only on the individual server and therefore fail to reveal inter-server connections of an attack campaign. In this paper, we propose a complementary system, deMSF, to identify server flocks, which are formed by infrastructures involved in the same malicious campaign. Our solution first acquires server flocks by mining relations of servers from both spatial and temporal dimensions. Further we extract the semantic vectors of servers based on word2vec and build a textCNN-based flocks classifier to recognize malicious flocks. We evaluate deMSF with real-world traffic collected from an ISP network. The result shows that it has a high precision of 99% with 90% recall.
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deMSF:一种检测同一活动中恶意服务器群的方法
目前,网络犯罪分子倾向于利用带有多台服务器的动态恶意基础设施进行攻击,例如恶意软件分发和控制。与单一服务器相比,使用多个服务器可以使犯罪更加高效和隐蔽。由于必要的角色基础设施的作用,已经提出了许多方法来检测恶意服务器。然而,许多现有的方法通常只针对单个服务器,因此无法揭示攻击活动的服务器间连接。在本文中,我们提出了一个补充系统,deMSF,来识别服务器群,这些服务器群是由参与相同恶意活动的基础设施组成的。我们的解决方案首先通过从空间和时间维度挖掘服务器之间的关系来获取服务器群。在此基础上,基于word2vec提取服务器的语义向量,构建基于textcnn的群分类器进行恶意群识别。我们用从ISP网络收集的真实流量来评估deMSF。结果表明,该方法具有99%的准确率和90%的召回率。
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