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Feature selection based intrusion detection system using the combination of DBSCAN, K-Mean++ and SMO algorithms

机译:基于功能选择的入侵检测系统,使用DBSCAN,K-均值++和SMO算法的组合

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IDS is the main concern of the security which is useful to prevent the attack at host and network level. In this propose work, classification of KDD intrusion dataset is proposed along with noise reduction, clustering and feature selection. DBSCAN algorithm has been applied to reduce noise present in KDD dataset. After noise removal genetic search approach is utilize to pick relevant feature. K-Means++ clustering method is utilized to cluster the dataset and resultant dataset is tested by SMO based classifier. A confirmation of concept prototype has been implemented to examine the performance of proposed approach using WEKA and MATLAB data mining tools. It is observed that proposed methods gives 96.922% accuracy. A comparative analysis performed between proposed methods and KMSVM (Simple K-mean with SVM classification) and it is observed that proposed method gives better results.
机译:IDS是安全性的主要关注,这是防止在主机和网络级别的攻击。在这项建议工作中,提出了KDD入侵数据集的分类,以及降噪,聚类和特征选择。已应用DBSCAN算法以降低KDD数据集中存在的噪声。噪声去除遗传搜索方法以挑选相关特征后。 K-Means ++群集方法用于群集数据集,并由基于SMO的分类器测试的结果数据集。已经实施了概念原型的确认,以研究使用Weka和Matlab数据挖掘工具的提出方法的性能。观察到提出的方法提供了96.922%的准确性。在所提出的方法和KMSVM之间进行的比较分析(简单的k均值,具有SVM分类),并且观察到提出的方法提供了更好的结果。

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