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An Organic Model for Detecting Cyber-Events

机译:检测网络事件的有机模型

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摘要

Cyber entities in many ways mimic the behavior of organic systems. Individuals or groups compete for limited resources using a variety of strategies, the most effective of which are reused and refined in later 'generations'. Traditionally this behavior has made detection of malicious entities very difficult because 1) recognition systems are often built on exact matching to a pattern that can only be 'learned' after a malicious entity reveals itself and 2) the enormous volume and variation in benign entities is an overwhelming source of previously unseen entities that often confound detectors. To turn the tables of complexity on the would-be attackers, we have developed a method for mapping the sequence of behaviors in which cyber entities engage to strings of text and analyze these strings using modified bioinformatics algorithms. Bioinformatics algorithms optimize the alignment between text strings even in the presence of mismatches, insertions or deletions and do not require an a priori definition of the patterns one is seeking. Nor do they require any type of exact matching. This allows the data itself to suggest meaningful patterns that are conserved between cyber entities. We demonstrate this method on data generated from live network traffic. The impact of this approach is that it can rapidly calculate similarity measures of previously unseen cyber entities in terms of well-characterized entities. These measures may also be used to organize large collections of data into families, making it possible to identify motifs indicative of each family.
机译:在许多方面,网络实体模仿了有机系统的行为。个人或团体使用各种策略竞争有限的资源,最有效的是,最有效的是在后来的“代”中重复使用和精炼。传统上,这种行为使恶意实体的检测非常困难,因为1)识别系统通常建立在精确匹配的模式上,该模式可以在恶意实体显示自己并且2)良好的体积和良性实体的巨大和变化之后经常混淆探测器的先前看不见的实体的压倒性源。要将复杂性的表格转换为遗嘱攻击者,我们开发了一种映射网络实体对文本串的行为序列的方法,并使用修改的生物信息学算法分析这些字符串。生物信息学算法算法即使在存在不匹配,插入或删除的情况下也不需要先验的模式的先验定义,优化文本字符串之间的对齐。它们也不需要任何类型的完全匹配。这允许数据本身建议在网络实体之间保守的有意义的模式。我们在实时网络流量生成的数据上演示了这种方法。这种方法对这种方法的影响是,它可以在特征良好的实体方面迅速计算以前看不见的网络实体的相似度测量。这些措施也可用于将大量数据集合到家庭中,使得可以识别指示每个家庭的主题。

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