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Enhancing Performance of Intrusion Detection through Soft Computing Techniques

机译:通过软计算技术提高入侵检测的性能

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The worldwide rapid expansion of computer networks and ever growing dependence of organizations on network based information management have led to serious security concerns. Among other security threats network intrusion has been a major concern which requires considerable attention in order to protect the information resources that are accessible via network infrastructure. Though different intrusion detection approaches have been experimented but none of them can guarantee complete protection against network intrusions. Furthering research in this direction, we have been exploring the use of soft computing techniques to analyze intrusion data in order to detect intrusive behavior in network access patters. In this paper, we have carried out some experiments using techniques such as Radial Basis Function Network (RBFN), Self-Organizing Map (SOM), Support Vector Machine (SVM), back propagation, and J48 on the NSL-KDD intrusion data set in order to evaluate the performance of each of the techniques. We have also compared the performance of these techniques with respect to the detection and false alarm rates.
机译:计算机网络在世界范围内的快速扩展以及组织对基于网络的信息管理的依赖性日益增加,已经引起了严重的安全隐患。除其他安全威胁外,网络入侵一直是一个主要问题,为了保护可通过网络基础结构访问的信息资源,需要引起足够的重视。尽管已经尝试了不同的入侵检测方法,但是它们都不能保证完全防御网络入侵。为了进一步朝这个方向进行研究,我们一直在探索使用软计算技术来分析入侵数据,以便检测网络访问模式中的入侵行为。在本文中,我们使用NSF-KDD入侵数据集上的径向基函数网络(RBFN),自组织映射(SOM),支持向量机(SVM),反向传播和J48等技术进行了一些实验为了评估每种技术的性能。我们还比较了这些技术在检测和误报率方面的性能。

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