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LITNET-2020: An Annotated Real-World Network Flow Dataset for Network Intrusion Detection

机译:LITNET-2020:用于网络入侵检测的带注释的实际网络流数据集

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摘要

Network intrusion detection is one of the main problems in ensuring the security of modern computer networks, Wireless Sensor Networks (WSN), and the Internet-of-Things (IoT). In order to develop efficient network-intrusion-detection methods, realistic and up-to-date network flow datasets are required. Despite several recent efforts, there is still a lack of real-world network-based datasets which can capture modern network traffic cases and provide examples of many different types of network attacks and intrusions. To alleviate this need, we present LITNET-2020, a new annotated network benchmark dataset obtained from the real-world academic network. The dataset presents real-world examples of normal and under-attack network traffic. We describe and analyze 85 network flow features of the dataset and 12 attack types. We present the analysis of the dataset features by using statistical analysis and clustering methods. Our results show that the proposed feature set can be effectively used to identify different attack classes in the dataset. The presented network dataset is made freely available for research purposes.
机译:网络入侵检测是确保现代计算机网络,无线传感器网络(WSN)和互联网(IOT)安全性方面的主要问题之一。为了开发有效的网络入侵检测方法,需要现实和最新的网络流数据集。尽管最近的几项努力,但仍然缺乏现实世界网络的数据集,可以捕获现代网络流量情况,并提供许多不同类型的网络攻击和入侵的示例。为了减轻这种需求,我们提供了Litnet-2020,这是一种从真实世界学术网络获得的新的注释网络基准数据集。 DataSet介绍了正常和攻击性网络流量的真实示例。我们描述并分析了数据集和12种攻击类型的85个网络流特征。我们使用统计分析和聚类方法介绍了数据集特征的分析。我们的结果表明,所提出的功能集可以有效地用于标识数据集中的不同攻击类。所呈现的网络数据集是免费提供的用于研究目的。

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