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Of daemons and men: reducing false positive rate in intrusion detection systems with file system footprint analysis

机译:守护者和男性:在文件系统足迹分析中降低入侵检测系统中的假阳性率

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摘要

In this work, we propose a methodology for reducing false alarms in file system intrusion detection systems, by taking into account the daemon's file system footprint. More specifically, we experimentally show that sequences of outliers can serve as a distinguishing characteristic between true and false positives, and we show how analysing sequences of outliers can lead to lower false positive rates, while maintaining high detection rates. Based on this analysis, we developed an anomaly detection filter that learns outlier sequences using k-nearest neighbours with normalised longest common subsequence. Outlier sequences are then used as a filter to reduce false positives on the FI2D file system intrusion detection system. This filter is evaluated on both overlapping and non-overlapping sequences of outliers. In both cases, experiments performed on three real-world web servers and a honeynet show that our approach achieves significant false positive reduction rates (up to 50 times), without any degradation of the corresponding true positive detection rates.
机译:在这项工作中,我们通过考虑到守护进程的文件系统足迹,提出了一种减少文件系统入侵检测系统中的误报的方法。更具体地说,我们通过实验表明异常值的序列可以作为真假阳性之间的区别特征,并且我们展示了分析异常值的序列如何导致较低的假阳性率,同时保持高检测率。在此分析的基础上,我们开发了一种异常检测滤波器,可以使用K-Collect邻居具有归一化最长的常见子序列的异常检测过滤器。然后将异常值序列用作滤波器,以减少FI2D文件系统入侵检测系统上的误报。对异常值的重叠和非重叠序列进行评估该过滤器。在这两种情况下,在三个现实世界网络服务器和核心网络上进行的实验表明,我们的方法可以实现显着的假阳性减少速率(最多50次),而不会有相应的真正阳性检测率的任何降低。

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