pca -子空间方法-对于全网范围的异常检测是否足够好

Bin Zhang, Jiahai Yang, Jianping Wu, Donghong Qin, Lei Gao
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引用次数: 25

摘要

提出了一种用于全网异常检测的pca子空间方法。尽管人们提出了一些减少正态子空间污染的方法,但对主成分分析来说,正态子空间污染仍然是一个巨大的挑战。在本文中,我们应用pca -子空间方法对来自阿比林的六个月的始发-目的地(OD)流数据进行了分析。结果表明,正常子空间污染主要是由少数最强OD流的异常引起的,这对于子空间方法来说似乎是不可避免的。进一步将子空间方法检测到的异常与人工标记的各OD流异常进行对比,发现子空间方法检测到的异常主要是由中OD流和少数大OD流异常引起的,而小OD流的大多数异常隐藏在异常子空间中,pca子空间方法难以检测到。分析了子空间方法无法检测到异常的原因,提出利用正态子空间检测少数强OD流引起的异常,并进一步划分异常子空间以检测更多小OD流引起的异常。本文的目的一方面是为了解决以往工作所忽略的局限性,进一步改进子空间方法,另一方面也需要新的网络流量检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PCA-subspace method — Is it good enough for network-wide anomaly detection
PCA-subspace method has been proposed for network-wide anomaly detection. Normal subspace contamination is still a great challenge for PCA although some methods are proposed to reduce the contamination. In this paper, we apply PCA-subspace method to six-month Origin-Destination (OD) flow data from the Abilene. The result shows that normal subspace contamination is mainly caused by anomalies from a few strongest OD flows, and seems unavoidable for subspace method. Further comparison of anomalies detected by subspace method and manually tagged anomalies from each OD flows, we find that anomalies detected by subspace method are mainly caused by anomalies from medium and a few large OD flows, and most anomalies of minor OD flows are buried in abnormal subspace and hard to be detected by PCA-subspace method. We analyze the reason for those anomalies undetected by subspace method and suggest to use normal subspace to detect anomalies caused by a few strongest OD flows, and to further divide abnormal subspace to detect more anomalies from minor OD flows. The goal of this paper is to address limitations neglected by prior works and further improve the subspace method on one hand, also call for novel detection methods for network-wide traffic on another hand.
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