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Application of graph-based semi-supervised learning for development of cyber COP and network intrusion detection

机译:基于图的半监督学习在网络COP开发和网络入侵检测中的应用

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The United States increasingly relies on cyber-physical systems to conduct military and commercial operations. Attacks on these systems have increased dramatically around the globe. The attackers constantly change their methods, making state-of-the-art commercial and military intrusion detection systems ineffective. In this paper, we present a model to identify functional behavior of network devices from netflow traces. Our model includes two innovations. First, we define novel features for a host IP using detection of application graph patterns in IP's host graph constructed from 5-min aggregated packet flows. Second, we present the first application, to the best of our knowledge, of Graph Semi-Supervised Learning (GSSL) to the space of IP behavior classification. Using a cyber-attack dataset collected from NetFlow packet traces, we show that GSSL trained with only 20% of the data achieves higher attack detection rates than Support Vector Machines (SVM) and Naive Bayes (NB) classifiers trained with 80% of data points. We also show how to improve detection quality by filtering out web browsing data, and conclude with discussion of future research directions.
机译:美国越来越依赖网络物理系统来进行军事和商业行动。在全球范围内,对这些系统的攻击急剧增加。攻击者不断改变他们的方法,使最先进的商业和军事入侵检测系统失效。在本文中,我们提出了一个模型,用于从netflow跟踪中识别网络设备的功能行为。我们的模型包括两项创新。首先,我们通过检测IP主机图中由5分钟聚合数据包流构成的应用程序图形模式,为主机IP定义了新颖的功能。其次,据我们所知,我们将图半监督学习(GSSL)应用于IP行为分类领域。使用从NetFlow数据包跟踪中收集的网络攻击数据集,我们显示仅训练了20%数据的GSSL可以比训练有80%数据点的支持向量机(SVM)和朴素贝叶斯(NB)分类器获得更高的攻击检测率。我们还将展示如何通过过滤掉Web浏览数据来提高检测质量,并以对未来研究方向的讨论作为结束。

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