用于优化网络入侵和机器学习方法的公共领域数据集

Maznan Deraman, Abd Jalil Desa, Z. Othman
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引用次数: 4

摘要

网络入侵检测系统(NIDS)的主要任务是减轻可能危及网络资源及其信息安全的网络和安全攻击。该领域的研究主要集中在改进网络流量检测方法上。机器学习技术已被广泛用于分析包括网络流量在内的大型数据集。为了开发完善的网络入侵检测工具机制,需要使用基准数据集来辅助数据挖掘过程。本文介绍了可用于NIDS研究的公开基准数据集,如KDDCup99、IES、pcapr等。我们使用一些流行的机器学习工具来可视化基准数据集的属性和特征。
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Public domain datasets for optimizing network intrusion and machine learning approaches
Network intrusion detection system (NIDS) commonly attributed to the task to mitigate network and security attacks that has potential to compromise the safety of a network resources and its information. Research in this area mainly focuses to improve the detection method in network traffic flow. Machine learning techniques had been widely used to analyze large datasets including network traffic. In order to develop a sound mechanism for NIDS detection tool, benchmark datasets is required to assist the data mining process. This paper presents the benchmark datasets available publicly for NIDS study such as KDDCup99, IES, pcapr and others. We use some popular machine learning tools to visualize the properties and characteristics of the benchmark datasets.
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