基于决策树算法的网络入侵检测系统的实现

Neha G. Relan, D. Patil
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引用次数: 53

摘要

随着人们对互联网的需求日益增加,安全的重要性也日益增加。互联网的大量使用极大地影响了系统的安全性。黑客对系统进行了细致入微的监控,因此网络的安全性受到了密切关注。传统的入侵检测技术存在检测率低、虚警率高等局限性。分类器的性能在其有效性方面是一个重要的问题;IDS要检查的特性的数量也应该得到改进。在我们的工作中,我们提出了两种技术,C4.5决策树算法和C4.5决策树与修剪,利用特征选择。在C4.5带修剪的决策树中,我们只考虑离散值属性进行分类。我们使用KDDCup'99和NSL_KDD数据集来训练和测试分类器。实验结果表明,采用C4.5决策树剪枝方法可以获得较好的结果,准确率达到98%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of network intrusion detection system using variant of decision tree algorithm
As the need of internet is increasing day by day, the significance of security is also increasing. The enormous usage of internet has greatly affected the security of the system. Hackers do monitor the system minutely or keenly, therefore the security of the network is under observation. A conventional intrusion detection technology indicates more limitation like low detection rate, high false alarm rate and so on. Performance of the classifier is an essential concern in terms of its effectiveness; also number of feature to be examined by the IDS should be improved. In our work, we have proposed two techniques, C4.5 Decision tree algorithm and C4.5 Decision tree with Pruning, using feature selection. In C4.5 Decision tree with pruning we have considered only discrete value attributes for classification. We have used KDDCup'99 and NSL_KDD dataset to train and test the classifier. The Experimental Result shows that, C4.5 decision tree with pruning approach is giving better results with all most 98% of accuracy.
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