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首页> 外文期刊>The international arab journal of information technology >Intrusion Detection System using Fuzzy Rough Set Feature Selection and Modified KNN Classifier
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Intrusion Detection System using Fuzzy Rough Set Feature Selection and Modified KNN Classifier

机译:使用模糊粗糙集特征选择和改进的KNN分类器的入侵检测系统

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摘要

Intrusion detection systems are used to detect and prevent the attacks in networks and databases. However, the increase in the dimension of the network dataset has become a major problem nowadays. Feature selection is used to reduce the dimension of the attributes present in those huge data sets. Classical Feature selection algorithms are based on Rough set theory, neighborhood rough set theory and fuzzy sets. Rough Set Attribute Reduction Algorithm is one of the major theories used for successfully reducing the attributes by removing redundancies. In this algorithm, significant features are selected data are extracted. In this paper, a new feature selection algorithm is proposed using the Maximum dependence Maximum Significance algorithm. This algorithm is used for selecting the minimal number of attributes of knowledge Discovery and Data (KDD) data set. Moreover, a new K-Nearest Neighborhood based algorithm proposed for classifying data set. This proposed feature selection algorithm considerably reduces the unwanted attributes or features and the classification algorithm finds the type of intrusion effectively. The proposed feature selection and classification algorithms are very efficient in detecting attacks and effectively reduce the false alarm rate.
机译:入侵检测系统用于检测和防止网络和数据库中的攻击。然而,网络数据集的维度的增加已经成为如今的主要问题。特征选择用于减少这些庞大数据集中存在的属性的维度。经典特征选择算法基于粗糙集理论,邻域粗糙集理论和模糊集。粗糙集属性缩减算法是通过删除冗余成功减少属性的主要理论之一。在该算法中,提取了所选数据的显着特征。本文采用了最大依赖性最大意义算法提出了一种新的特征选择算法。该算法用于选择知识发现和数据(KDD)数据集的最小值数。此外,提出了一种用于对数据集进行分类的新基于基于邻域的算法。该提出的特征选择算法显着降低了不需要的属性或特征,并且分类算法有效地找到了入侵类型。所提出的特征选择和分类算法在检测攻击中非常有效,并有效降低误报率。

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