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Anomalous packet identification for network intrusion detection

机译:网络入侵检测的异常数据包识别

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摘要

A packet-level anomaly detection system for network intrusion detection in high-bandwidth network environments is described. The approach is intended for hardware implementation and could be included in the network interface, switch or firewall. Efficient implementation in software on a network host is also possible. Network traffic is characterized using a novel technique that maps packet-level payloads onto a set of counters using bit-pattern hash functions, which were chosen for their implementation efficiency in both hardware and software. Machine learning is accomplished by mapping unlabelled training data onto a set of two-dimensional grids and forming a set of bitmaps that identify anomalous and normal regions. These bitmaps are used as the classifiers for real-time detection. The proposed method is extremely efficient in both the offline machine learning and real-time detection components and has the potential to provide accurate detection performance due to the ability of the bitmaps to capture nearly arbitrary shaped regions in the feature space. Results of a preliminary study are presented that demonstrate the effectiveness of the technique.
机译:描述了用于高带宽网络环境中的网络入侵检测的数据包级异常检测系统。该方法适用于硬件实现,可以包含在网络接口,交换机或防火墙中。还可以有效地在网络主机上的软件实现。网络流量的特征是使用一种新颖的技术,即使用位模式散列函数将数据包级有效载荷映射到一组计数器上,这些功能在硬件和软件中选择了它们的实现效率。通过将未标记的训练数据映射到一组二维网格并形成识别异常和普通区域的一组位图来实现机器学习。这些位图用作实时检测的分类器。所提出的方法在离线机学习和实时检测组件中非常有效,并且具有由于位图捕获特征空间中几乎任意形状区域的能力而提供准确的检测性能。提出了初步研究的结果,证明了该技术的有效性。

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