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Anomalous Payload-Based Network Intrusion Detection

机译:基于异常有效负载的网络入侵检测

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摘要

We present a payload-based anomaly detector, we call PAYL, for intrusion detection. PAYL models the normal application payload of network traffic in a fully automatic, unsupervised and very effecient fashion. We first compute during a training phase a profile byte frequency distribution and their standard deviation of the application payload flowing to a single host and port. We then use Mahalanobis distance during the detection phase to calculate the similarity of new data against the pre-computed profile. The detector compares this measure against a threshold and generates an alert when the distance of the new input exceeds this threshold. We demonstrate the surprising effectiveness of the method on the 1999 DARPA IDS dataset and a live dataset we collected on the Columbia CS department network. In once case nearly 100% accuracy is achieved with 0.1% false positive rate for port 80 traffic.
机译:我们提出了一种基于有效载荷的异常检测器,称为PAYL,用于入侵检测。 PAYL以全自动,无人监督且非常有效的方式对网络流量的正常应用程序有效负载进行建模。我们首先在训练阶段计算配置文件字节频率分布及其流向单个主机和端口的应用程序有效负载的标准偏差。然后,我们在检测阶段使用Mahalanobis距离来计算新数据与预先计算的配置文件的相似度。检测器将此度量与阈值进行比较,并在新输入的距离超过此阈值时生成警报。我们在1999年DARPA IDS数据集和在哥伦比亚CS部门网络上收集的实时数据集上证明了该方法的惊人效果。在一次情况下,端口80流量的误报率只有0.1%,可实现近100%的精度。

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