Performance analysis of NSL-KDD dataset using ANN

B. Ingre, Anamika Yadav
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引用次数: 258

Abstract

Anomalous traffic detection on internet is a major issue of security as per the growth of smart devices and this technology. Several attacks are affecting the systems and deteriorate its computing performance. Intrusion detection system is one of the techniques, which helps to determine the system security, by alarming when intrusion is detected. In this paper performance of NSL-KDD dataset is evaluated using ANN. The result obtained for both binary class as well as five class classification (type of attack). Results are analyzed based on various performance measures and better accuracy was found. The detection rate obtained is 81.2% and 79.9% for intrusion detection and attack type classification task respectively for NSL-KDD dataset. The performance of the proposed scheme has been compared with existing scheme and higher detection rate is achieved in both binary class as well as five class classification problems.
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基于神经网络的NSL-KDD数据集性能分析
随着智能设备和互联网技术的发展,互联网异常流量检测是一个主要的安全问题。多个攻击正在影响系统,导致系统计算性能下降。入侵检测系统就是其中的一种技术,它通过在检测到入侵时报警来判断系统的安全性。本文利用人工神经网络对NSL-KDD数据集的性能进行了评价。所得结果既可分为二元类,也可分为五类(攻击类型)。根据各种性能指标对结果进行了分析,发现了较好的准确性。对于NSL-KDD数据集,入侵检测和攻击类型分类任务的检测率分别为81.2%和79.9%。将该算法与现有算法进行性能比较,在二值类和五类分类问题上均取得了较高的检测率。
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