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A selective parameter-based evolutionary technique for network intrusion detection

机译:基于选择性参数的进化技术在网络入侵检测中的应用

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Network intrusion detection has remained a field of rigorous research over the past few years. Advances in computing performance, in terms of processing power and storage, have allowed the use of resource-intensive intelligent algorithms, to detect intrusive activities, in a timely manner. Genetic Algorithms have emerged as a powerful domain-independent technique to facilitate searching of the most effective set of rules, to differentiate between normal and anomalous network traffic. The scope of research for developing cutting-edge and effective GA-based intrusion detection systems, has rapidly expanded to keep pace with variant attack types, increasingly witnessed from the adversary class. In this paper, we propose a GA-based technique for effectively identifying network intrusion attempts, and clearly differentiating these from normal network traffic. The performance of the proposed scheme is studied and analyzed on the KDD-99 intrusion benchmark data set. We performed a simulation-based analysis of the proposed scheme, with results strengthening our findings, and providing us directions for future work.
机译:在过去的几年中,网络入侵检测一直是严格的研究领域。在处理能力和存储方面,计算性能的进步已允许使用资源密集型智能算法来及时检测入侵活动。遗传算法已经成为一种功能强大的与域无关的技术,可以帮助搜索最有效的规则集,以区分正常网络流量和异常网络流量。开发先进且有效的基于GA的入侵检测系统的研究范围已迅速扩展,以跟上各种攻击类型的步伐,而在敌手阶级中越来越多地看到这种情况。在本文中,我们提出了一种基于GA的技术,可以有效地识别网络入侵尝试,并将其与正常的网络流量区分开来。在KDD-99入侵基准数据集上研究并分析了所提出方案的性能。我们对提议的方案进行了基于仿真的分析,结果加强了我们的发现,并为我们今后的工作提供了指导。

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