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Evolving High-Speed, Easy-to-Understand Network Intrusion Detection Rules with Genetic Programming

机译:演化高速,易于理解的网络入侵检测规则与遗传编程

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An ever-present problem in intrusion detection technology is how to construct the patterns of (good, bad or anomalous) behaviour upon which an engine have to make decisions regarding the nature of the activity observed in a system. This has traditionally been one of the central areas of research in the field, and most of the solutions proposed so far have relied in one way or another upon some form of data mining-with the exception, of course, of human-constructed patterns. In this paper, we explore the use of Genetic Programming (GP) for such a purpose. Our approach is not new in some aspects, as GP has already been partially explored in the past. Here we show that GP can offer at least two advantages over other classical mechanisms: it can produce very lightweight detection rules (something of extreme importance for highspeed networks or resource-constrained applications) and the simplicity of the patterns generated allows to easily understand the semantics of the underlying attack.
机译:入侵检测技术中的一个持久存在的问题是如何构建发动机必须在系统中观察到的活动性质的决定的(良好,坏或异常)行为的模式。传统上,这是该领域的中央研究领域之一,到目前为止所提出的大多数解决方案都以某种方式依赖于某种形式的数据挖掘 - 当然,当然是人构造的图案。在本文中,我们探讨了遗传编程(GP)的使用。在某些方面,我们的方法并不是新的,因为GP已经在过去已经部分探索。在这里,我们显示GP可以提供至少两个优于其他经典机制的优点:它可以产生非常轻量级的检测规则(对于高速网络或资源受限应用的极端重要性,所生成的模式的简单性允许容易地理解语义潜在的攻击。

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