A Feature Reduction Intrusion Detection System using Genetic Algorithm

A. Punitha, S. Vinodha, R. Karthika, R. Deepika
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引用次数: 2

Abstract

Nowadays security has become the most important feature in any field. We make use of the Intrusion Detection System (IDS) as it gathers information related to activities that violate security policies. An intrusion detection system (IDS) could be a device or software system application that monitors a network or systems for malicious activity or policy violations. Any malicious activity or violation is usually rumored either to associate administrator or collected centrally employing a security data and event management (SIEM) system. This system first uses the feature ranking on basis of information gain and correlation by ANN classifier. These reduced options are then fed to a feed forward neural network for coaching and testing on KDD99 dataset. This Intrusion detection system have curse of dimensionality which tends to increase time complexity and decrease resource utilization and number of comparisons are high. In order to overcome this we propose the system, which make use of the other feature ranking technique called genetic algorithm. Feature reduction is then done by combining ranks obtained from each data gain and correlation employing a novel approach to spot helpful and useless options. The input is feature set and produce the best output set using genetic algorithm. This system will reduce time complexity, only limited number of comparisons are done and also the performance rate is high in terms of classification accuracy.
基于遗传算法的特征约简入侵检测系统
如今,安全已成为任何领域最重要的特征。我们利用入侵检测系统(IDS)来收集与违反安全策略的活动相关的信息。入侵检测系统(IDS)可以是监视网络或系统的恶意活动或策略违反的设备或软件系统应用程序。任何恶意活动或违规通常会通知关联管理员,或者使用安全数据和事件管理(SIEM)系统集中收集。该系统首先利用人工神经网络分类器基于信息增益和相关性进行特征排序。然后将这些简化的选项馈送到前馈神经网络,在KDD99数据集上进行训练和测试。这种入侵检测系统具有维数多、时间复杂度高、资源利用率低、比较次数多等缺点。为了克服这个问题,我们提出了一种利用另一种特征排序技术——遗传算法的系统。然后,通过结合从每个数据增益和相关性中获得的排名,采用一种新的方法来发现有用和无用的选项,从而完成特征缩减。输入是特征集,利用遗传算法产生最佳输出集。该系统降低了时间复杂度,比较次数有限,分类准确率高。
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