基于领域感知遗传规划的网络入侵检测改进

Jorge Blasco Alís, A. Orfila, A. Ribagorda
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引用次数: 26

摘要

如何建立有效的系统来区分正常流量和入侵流量是网络入侵检测的核心问题之一。在本文中,我们探讨了遗传规划(GP)的使用。尽管针对该任务已经对GP进行了研究,但系统地忽略了网络入侵检测的内在特征。为了避免以往研究中对GP的盲目使用,我们基于IDS评价的最新进展,通过适应度函数来指导搜索。对于实验工作,我们使用了一个众所周知的数据集(即KDD-99),尽管它存在缺陷,但它已成为比较研究的标准。结果清楚地表明,智能使用GP实现的系统在有效性方面与最先进的建议相当(在现实条件下甚至更好),提高了它们的效率和简单性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Network Intrusion Detection by Means of Domain-Aware Genetic Programming
One of the central areas in network intrusion detection is how to build effective systems that are able to distinguish normal from intrusive traffic. In this paper we explore the use of Genetic Programming (GP) for such a purpose. Although GP has already been studied for this task, the inner features of network intrusion detection have been systematically ignored. To avoid the blind use of GP shown in previous research, we guide the search by means of a fitness function based on recent advances on IDS evaluation. For the experimental work we use a well-known dataset (i.e. KDD-99) that has become a standard to compare research although its drawbacks. Results clearly show that an intelligent use of GP achieves systems that are comparable (and even better in realistic conditions) to top state-of-the-art proposals in terms of effectiveness, improving them in efficiency and simplicity.
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