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Characterizing Honeypot-Captured Cyber Attacks: Statistical Framework and Case Study

机译:表征蜜罐捕获的网络攻击的特征:统计框架和案例研究

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摘要

Rigorously characterizing the statistical properties of cyber attacks is an important problem. In this paper, we propose the first statistical framework for rigorously analyzing honeypot-captured cyber attack data. The framework is built on the novel concept of stochastic cyber attack process, a new kind of mathematical objects for describing cyber attacks. To demonstrate use of the framework, we apply it to analyze a low-interaction honeypot dataset, while noting that the framework can be equally applied to analyze high-interaction honeypot data that contains richer information about the attacks. The case study finds, for the first time, that long-range dependence (LRD) is exhibited by honeypot-captured cyber attacks. The case study confirms that by exploiting the statistical properties (LRD in this case), it is feasible to predict cyber attacks (at least in terms of attack rate) with good accuracy. This kind of prediction capability would provide sufficient early-warning time for defenders to adjust their defense configurations or resource allocations. The idea of “gray-box” (rather than “black-box”) prediction is central to the utility of the statistical framework, and represents a significant step towards ultimately understanding (the degree of) the predictability of cyber attacks.
机译:严格表征网络攻击的统计特性是一个重要的问题。在本文中,我们提出了第一个统计框架,用于严格分析蜜罐捕获的网络攻击数据。该框架建立在新颖的随机网络攻击过程概念上,这是一种描述网络攻击的新型数学对象。为了演示该框架的使用,我们将其应用于分析低交互性蜜罐数据集,同时指出该框架可以同等地应用于分析包含更丰富的攻击信息的高交互性蜜罐数据。该案例研究首次发现蜜罐捕获的网络攻击表现出了远程依赖性(LRD)。案例研究证实,通过利用统计属性(在本例中为LRD),可以很好地预测网络攻击(至少在攻击率方面)。这种预测能力将为防御者提供足够的预警时间,以调整其防御配置或资源分配。 “灰盒”(而不是“黑盒”)预测的概念对于统计框架的实用性至关重要,它代表了朝着最终理解网络攻击的可预测性(程度)迈出的重要一步。

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