UNSW-NB15和KDD99数据集在网络入侵检测系统中的重要特点

Nour Moustafa, J. Slay
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引用次数: 146

摘要

由于网络流量的增加及其对提供无处不在的服务的重要性,网络攻击试图破坏机密性、完整性和可用性的安全原则。网络入侵检测系统(Network Intrusion Detection System, NIDS)通过网络环境监控和检测网络攻击模式。网络数据包由各种各样的特征组成,这些特征会对异常的检测产生负面影响。这些特征包含了一些不相关或冗余的特征,降低了检测攻击的效率,增加了虚警率。本文考察了UNSW-NB15和KDD99数据集的特征特征,并将UNSW-NB15的特征复制到KDD99数据集,以衡量其有效性。我们使用关联规则挖掘算法作为特征选择,从两个数据集中生成最强的特征。利用一些现有的分类器来评估准确度和FAR方面的复杂性。实验结果表明,原始的KDD99属性比复制的UNSW-NB15属性效率低。但是,对比两种数据集,KDD99数据集的精度优于UNSW-NB 15数据集,KDD99数据集的FAR低于UNSWNB 15数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Significant Features of the UNSW-NB15 and the KDD99 Data Sets for Network Intrusion Detection Systems
Because of the increase flow of network traffic and its significance to the provision of ubiquitous services, cyberattacks attempt to compromise the security principles of confidentiality, integrity and availability. A Network Intrusion Detection System (NIDS) monitors and detects cyber-attack patterns over networking environments. Network packets consist of a wide variety of features which negatively affects detection of anomalies. These features include some irrelevant or redundant features which reduce the efficiency of detecting attacks, and increase False Alarm Rate (FAR). In this paper, the feature characteristics of the UNSW-NB15 and KDD99 datasets are examined, and the features of the UNSW-NB15 are replicated to the KDD99 data set to measure their effeciency. We apply An Association Rule Mining algorithm as feature selection to generate the strongest features from the two data sets. Some existing classifiers are utilised to evaluate the complexity in terms of accuracy and FAR. The experimental results show that, the original KDD99 attributes are less efficient than the replicated UNSW-NB15 attributes of the KDD99 data set. However, comparing the two data sets, the accuracy of the KDD99 dataset is better than the UNSW-NB 15 dataset, and the FAR of the KDD99 dataset is lower the UNSWNB 15 dataset.
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