一种提高入侵防御系统分类能力的降维模型

Hajar Elkassabi, M. Ashour, F. Zaki
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引用次数: 2

摘要

近年来,入侵防御系统已成为计算机网络领域一个成熟的研究领域。特征过多的问题严重影响了入侵检测的性能。在之前的许多研究中,机器学习算法被用来识别网络流量,无论是有害的还是正常的。因此,为了获得精度,我们必须降低所使用数据的维数。本文提出了一种基于特征选择和机器学习相结合的模型设计方法。该模型依赖于从每个特征中选择基因来提高入侵检测系统的准确性。我们只从特征内容中选择对攻击检测有影响的内容。基于几种已知算法的比较,对其性能进行了评估。NSL-KDD数据集用于检查分类。该模型的准确率为98.8%,优于其他学习方法。
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A Proposed Model for Dimensionality Reduction to Improve the Classification Capability of Intrusion Protection Systems
Over the past few years, intrusion protection systems have drawn a mature research area in the field of computer networks. The problem of excessive features has a significant impact on intrusion detection performance. The use of machine learning algorithms in many previous researches has been used to identify network traffic, harmful or normal. Therefore, to obtain the accuracy, we must reduce the dimensionality of the data used. A new model design based on a combination of feature selection and machine learning algorithms is proposed in this paper. This model depends on selected genes from every feature to increase the accuracy of intrusion detection systems. We selected from features content only ones which impact in attack detection. The performance has been evaluated based on a comparison of several known algorithms. The NSL-KDD dataset is used for examining classification. The proposed model outperformed the other learning approaches with accuracy 98.8 %.
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