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首页> 外文期刊>ACM transactions on privacy and security >Following Passive DNS Traces to Detect Stealthy Malicious Domains Via Graph Inference
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Following Passive DNS Traces to Detect Stealthy Malicious Domains Via Graph Inference

机译:由于被动DNS跟踪通过图推断检测隐身恶意域

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Malicious domains, including phishing websites, spam servers, and command and control servers, are the reason for many of the cyber attacks nowadays. Thus, detecting them in a timely manner is important to not only identify cyber attacks but also take preventive measures. There has been a plethora of techniques proposed to detect malicious domains by analyzing Domain Name System (DNS) traffic data. Traditionally, DNS acts as an Internet miscreant's best friend, but we observe that the subtle traces in DNS logs left by such miscreants can be used against them to detect malicious domains. Our approach is to build a set of domain graphs by connecting "related" domains together and injecting known malicious and benign domains into these graphs so that we can make inferences about the other domains in the domain graphs. A key challenge in building these graphs is how to accurately identify related domains so that incorrect associations are minimized and the number of domains connected from the dataset is maximized. Based on our observations, we first train two classifiers and then devise a set of association rules that assist in linking domains together. We perform an in-depth empirical analysis of the graphs built using these association rules on passive DNS data and show that our techniques can detect many more malicious domains than the state-of-the-art.
机译:恶意域,包括网络钓鱼网站,垃圾邮件服务器和指挥机和控制服务器,这是Notianays的许多网络攻击的原因。因此,及时检测它们对于不仅识别网络攻击而且还具有预防措施的重要性。已经通过分析域名系统(DNS)流量数据,提出了一种夸大的技术来检测恶意域。传统上,DNS充当互联网错误的朋友,但我们观察到通过这种误解的DNS日志中的微妙迹线可以针对他们来检测恶意域。我们的方法是通过将“相关”域在一起并将已知的恶意和良性域注入这些图来构建一组域图,以便我们可以在域图中的其他域中进行推断。构建这些图形的关键挑战是如何准确地识别相关域,以便最小化不正确的关联,并且从数据集连接的域数最大化。基于我们的观察,我们首先培训两个分类器,然后设计一组协会规则,帮助将域联系在一起。我们对使用这些关联规则构建的图形进行了深入的实证分析,这些图形在被动DNS数据上建立的图表,并显示了我们的技术可以检测到比最先进的更有恶意域。

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