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A Systematic Literature Review of Intrusion Detection System for Network Security: Research Trends, Datasets and Methods

机译:网络安全性入侵检测系统的系统文献综述:研究趋势,数据集和方法

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Study on intrusion detection system (IDS) mostly allow network administrators to focus on development activities in terms of network security and making better use of resource. Many IDS datasets, techniques and methods conducted by some administrator to get a good performance of IDS. But, some methods, techniques and datasets published differently show that research in the field of intrusion detection is losing comprehensiveness. This literature review aims to analyze and identify the research trends of techniques, datasets and methods used on IDS topics that published in January 2016 to May 2020. Based on inclusion and exclusion criteria was found 62 primary studies that focus and related to IDS topic, that focuses on seven machine learning techniques: classification (81%), clustering (8%), estimation (3%), association (2%), prediction (2%), dataset analysis (3%) and the minor research covered only 1% for statistic. Beside that, the research studies used public datasets as 79% and private datasets as 21%. Eighteen different methods (algorithm) have been applied and proposed to detect intrusion. From the eighteen methods, six methods most applied in IDS, they are k Nearest Neighbor (k-NN) 7%, Random Forest (RF) 7%, Naïve Bayes (NB) 15%, Decision Tree (DT) 17%, Neural Network (NN) 20% and Support Vector Machine (SVM) 34%. Furthermore, some researchers proposed some techniques and methods to improve the accuracy of machine learning classifier on IDS, like ensembling machine learning methods, using boosting algorithm and combined feature selection algorithm. Future work may ensemble classifier methods can tackle the classification problem and can improve accuracy in detecting intrusions.
机译:入侵检测系统(IDS)的研究主要允许网络管理员专注于网络安全方面的开发活动,并更好地利用资源。一些管理员进行的许多ID数据集,技术和方法以获得良好的ID。但是,一些方法,技术和数据集出版了不同的表明,在入侵检测领域的研究正在失去全面性。该文献综述旨在分析和确定2016年1月至5月发布的IDS主题的技术,数据集和方法的研究趋势。基于包含和排除标准,重点关注并与IDS主题有关,这是基于纳入和排除标准专注于七种机器学习技术:分类(81%),聚类(8%),估计(3%),关联(2%),预测(2%),数据集分析(3%),仅涵盖1统计价值。除此之外,研究研究使用公共数据集作为79%和私人数据集约为21%。已经应用了十八种不同的方法(算法)并提出检测入侵。从十八种方法,六种方法最多应用于ID,它们是k最近邻居(K-NN)7%,随机森林(rf)7%,Naïve贝叶斯(Nb)15%,决策树(dt)17%,神经网络(NN)20%并支持向量机(SVM)34%。此外,一些研究人员提出了一些技术和方法,以提高IDS上机器学习分类器的准确性,如组合机器学习方法,使用升压算法和组合特征选择算法。未来的工作可能组合分类器方法可以解决分类问题,可以提高检测入侵的准确性。

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