发现和分析离经叛道的社区:方法和实验

Napoleon Paxton, Dae-il Jang, I. S. Moskowitz, Gail-Joon Ahn, S. Russell
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引用次数: 0

摘要

僵尸网络继续威胁着全球计算机网络的安全格局。这部分是由于从流量分析中发现僵尸网络流量和识别可操作情报之间存在时间滞后。在本文中,我们提出了一种新的方法,通过将僵尸网络流量分割到社区并识别每个社区成员的类别来填补这一空白。此信息可用于识别攻击成员(僵尸节点)、命令和控制成员(命令和控制节点)、僵尸网络控制器成员(僵尸主节点)和受害者成员(受害者节点)。所有这些都可以立即用于取证或防御未来的攻击。我们的方法的真正新颖之处在于将恶意网络数据分割成关系社区,而不仅仅是基于空间的集群。社区的关系性质使我们无需对整个网络进行深入分析就能发现社区角色。通过对真实僵尸网络流量的实验,讨论了该方法的可行性和实用性。我们的实验结果显示了高检测率和低假阳性率,这鼓励了我们的方法可以成为深度防御策略的一个有价值的补充。
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Discovering and analyzing deviant communities: Methods and experiments
Botnets continue to threaten the security landscape of computer networks worldwide. This is due in part to the time lag present between discovery of botnet traffic and identification of actionable intelligence derived from the traffic analysis. In this article we present a novel method to fill such a gap by segmenting botnet traffic into communities and identifying the category of each community member. This information can be used to identify attack members (bot nodes), command and control members (Command and Control nodes), botnet controller members (botmaster nodes), and victim members (victim nodes). All of which can be used immediately in forensics or in defense of future attacks. The true novelty of our approach is the segmentation of the malicious network data into relational communities and not just spatially based clusters. The relational nature of the communities allows us to discover the community roles without a deep analysis of the entire network. We discuss the feasibility and practicality of our method through experiments with real-world botnet traffic. Our experimental results show a high detection rate with a low false positive rate, which gives encouragement that our approach can be a valuable addition to a defense in depth strategy.
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