基于特征约简技术的决策树分类器入侵检测

IF 0.6 Q3 ENGINEERING, MULTIDISCIPLINARY
Syed Akbar Raza Shirazi, Sania Shamim, Abdul Hannan Khan, Aqsa Anwar
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引用次数: 0

摘要

近十年来,互联网用户和网络服务的数量逐渐迅速增加。大量的数据通过网络产生和传输。网络安全威胁的数量也在增加。虽然在入侵检测系统中使用了许多机器学习的方法和方法来检测攻击,但对于大数据集和实时检测来说,它们通常效率不高。机器学习分类器使用数据集的所有特征来最小化分类器的检测精度。采用简化特征选择技术,选择与机器学习方法最相关的特征来检测攻击,以获得更高的准确性。在本文中,我们采用递归特征消去技术,并结合机器学习方法为大数据选择更多相关特征,以应对检测攻击的挑战。我们将该技术和分类器应用于NSL KDD数据集。结果表明,在大数据环境下,选择所有特征进行检测可以最大限度地降低复杂性,并且在效率和准确性方面,特征选择可以最好地提高分类器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrusion detection using decision tree classifier with feature reduction technique
The number of internet users and network services is increasing rapidly in the recent decade gradually. A Large volume of data is produced and transmitted over the network. Number of security threats to the network has also been increased. Although there are many machine learning approaches and methods are used in intrusion detection systems to detect the attacks, but generally they are not efficient for large datasets and real time detection. Machine learning classifiers using all features of datasets minimized the accuracy of detection for classifier. A reduced feature selection technique that selects the most relevant features to detect the attack with ML approach has been used to obtain higher accuracy. In this paper, we used recursive feature elimination technique and selected more relevant features with machine learning approaches for big data to meet the challenge of detecting the attack. We applied this technique and classifier to NSL KDD dataset. Results showed that selecting all features for detection can maximize the complexity in the context of large data and performance of classifier can be increased by feature selection best in terms of efficiency and accuracy.
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