Understanding the context of network traffic alerts

B. Cappers, J. V. Wijk
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引用次数: 24

Abstract

For the protection of critical infrastructures against complex virus attacks, automated network traffic analysis and deep packet inspection are unavoidable. However, even with the use of network intrusion detection systems, the number of alerts is still too large to analyze manually. In addition, the discovery of domain-specific multi stage viruses (e.g., Advanced Persistent Threats) are typically not captured by a single alert. The result is that security experts are overloaded with low-level technical alerts where they must look for the presence of an APT. In this paper we propose an alert-oriented visual analytics approach for the exploration of network traffic content in multiple contexts. In our approach CoNTA (Contextual analysis of Network Traffic Alerts), experts are supported to discover threats in large alert collections through interactive exploration using selections and attributes of interest. Tight integration between machine learning and visualization enables experts to quickly drill down into the alert collection and report false alerts back to the intrusion detection system. Finally, we show the effectiveness of the approach by applying it on real world and artificial data sets.
了解网络流量警报的上下文
为了保护关键基础设施免受复杂病毒的攻击,自动化的网络流量分析和深度报文检测是不可避免的。然而,即使使用网络入侵检测系统,警报的数量仍然太大,无法手工分析。此外,发现特定于领域的多阶段病毒(例如,高级持续威胁)通常不会被单个警报捕获。其结果是,安全专家超负荷处理低级技术警报,他们必须寻找APT的存在。在本文中,我们提出了一种面向警报的可视化分析方法,用于探索多种环境下的网络流量内容。在我们的方法CoNTA(网络流量警报的上下文分析)中,专家们可以通过使用选择和感兴趣的属性进行交互式探索来发现大型警报集合中的威胁。机器学习和可视化之间的紧密集成使专家能够快速深入到警报集合中,并将错误警报报告回入侵检测系统。最后,我们通过将其应用于真实世界和人工数据集来证明该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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