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Improving the Intrusion Detection System for NSL-KDD Dataset based on PCA-Fuzzy Clustering-KNN

机译:基于PCA模糊聚类-NKN的NSL-KDD数据集入侵检测系统

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Nowadays, information security is extremely critical issues for every organization to protect information from the useless data on the manipulation of network traffic or intrusion. Intrusion detection system has one of the important roles to prevent data or information from malicious behaviors because its capable of detecting attacks in several available environments. Thereafter, many researches concentrate on developing new algorithms to treat the Dataset by different way. In this work, we suggest a new proposed PCA-fuzzy Clustering-KNN method that means ensemble of Analysis of Principal Component and Fuzzy Clustering with K-Nearest Neighbor feature selection technics. However, we perform two main class classifications to construct our suggested model. Then, to check the robustness of model we used as well-known Dataset NSL-KDD used for analysis of anomaly. This Dataset is based on benchmark data used for intrusion detection, KDDCup 1999. Therefore, we analyse NSL-KDD Dataset using PCA-fuzzy Clustering-KNN analytic and try to define the performance of incident using machine learning algorithms, the algorithm learns what type of attacks are found in which classes in order to improve the classification accuracy and reduce high false alarm rate and detects the maximum of detection rate from Dataset as shown by the numerical results.
机译:如今,信息安全对每个组织来保护来自无用数据的信息的极其关键问题,用于操纵网络流量或入侵。入侵检测系统具有阻止数据或信息来自恶意行为的重要作用之一,因为它能够检测多个可用环境中的攻击。此后,许多研究专注于开发新算法以通过不同的方式对数据集进行处理。在这项工作中,我们建议了一种新的提议PCA模糊聚类-KNN方法,这意味着与K最近邻特征选择技术的主成分和模糊聚类分析的集合。但是,我们执行两个主要类分类以构建我们建议的模型。然后,检查模型的稳健性,我们用作用于分析异常的众所周知的DataSet NSL-KDD。此数据集基于用于入侵检测的基准数据,KDDCUP 1999.因此,我们使用PCA-Fuzzy Clustering-KNN分析分析NSL-KDD数据集并尝试使用机器学习算法定义事件的性能,该算法了解什么类型发现攻击在哪个类中,以提高分类准确性并降低高误报率并检测来自数据集的检测率的最大值,如数值结果所示。

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