Towards Efficient Labeling of Network Incident Datasets Using Tcpreplay and Snort

Kohei Masumi, Chansu Han, Tao Ban, Takeshi Takahashi
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引用次数: 7

Abstract

Research on network intrusion detection (NID) requires a large amount of traffic data with reliable labels indicating which packets are associated with particular network attacks. In this paper, we implement a prototype of an automated system to create labeled packet datasets for NID research. In this paper, we implement a prototype of an automated system to assign labels to packet datasets for NID research. By re-transmitting pre-captured packet data in a controlled network environment pre-installed with a network intrusion detection system, the system automatically assigns labels to attack packets within the packet data. In the feasibility study, we investigate factors that may influence the detection accuracy of the attacking packets and show an example using the prototype to label a packet file. Finally, we show an efficient way to locate the packets associated with issued NID alerts using this prototype.
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利用tcppreplay和Snort实现网络事件数据集的高效标记
网络入侵检测(NID)的研究需要大量的流量数据,这些数据必须带有可靠的标签,以表明哪些数据包与特定的网络攻击相关联。在本文中,我们实现了一个自动化系统的原型,为NID研究创建标记数据包数据集。在本文中,我们实现了一个自动化系统的原型,为NID研究的分组数据集分配标签。通过在预先安装了网络入侵检测系统的受控网络环境中重新传输预先捕获的数据包数据,系统会在数据包数据中自动为攻击报文分配标签。在可行性研究中,我们研究了可能影响攻击报文检测精度的因素,并给出了一个使用原型对数据包文件进行标记的示例。最后,我们展示了一种使用此原型定位与发出的NID警报关联的数据包的有效方法。
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