基于主成分的网络异常检测阈值选择研究

P. Djukic, B. Nandy
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引用次数: 1

摘要

基于主成分的异常检测已成为网络异常检测的重要统计工具。它通过将汇总网络信息投射到信号和噪声子空间并检测噪声子空间中的异常来工作。最近,这种网络异常方法发现了一些主要问题。其中最主要的问题是难以选择一个阈值来声明噪声子空间中的能量包含网络异常。我们表明,这个问题的原因是以前用于选择阈值的一些假设,即流量遵循正态分布,不适合可用网络轨迹的现实。然后,我们证明了噪声子空间中的能量可以用长尾柯西分布建模,并使用该近似计算可靠的阈值。我们对网络轨迹的分析表明,能量分布的柯西分布近似可以显著降低虚警率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Threshold Selection for Principal Component Based Network Anomaly Detection
Principal component based anomaly detection has emerged as an important statistical tool for network anomaly detection. It works by projecting summary network information onto a signal and noise sub-spaces and detecting anomalies in the noise sub-space. Recently some major problems where detected with this network anomaly approach. The chief among the problems is the difficulty in selecting a threshold used to declare that the energy in the noise sub-space contains a network anomaly. We show that the reason for this problem is that some of the assumption previously used to select the threshold, namely that the traffic follows a Normal distribution, do not fit the reality of the available network traces. Then, we show that the energy in the noise sub-space can be modeled with the long-tailed Cauchy distribution and use this approximation to calculate reliable thresholds. Our analysis of network traces indicates that the Cauchy distribution approximation of the energy distribution should significantly lower the false alarm rate.
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