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Revisit network anomaly ranking in datacenter network using re-ranking

机译:使用重新排名重新访问数据中心网络中的网络异常排名

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摘要

With the continuous growth of modern datacenter networks in recent years, network intrusions targeting those datacenters have also been growing rapidly. In this situation, system monitoring and intrusion detection become essential to control the risks of such networks. There are many network anomaly detection systems being used to identify significant anomalies in datacenter networks. However, they often focus on detecting significant anomalies, while ignoring insignificant anomalies oftentimes. Existing anomaly ranking models are not accurate in detecting insignificant anomalies. This becomes an issue when attacks are from insignificant anomaly traffic. In this paper, we revisit the network anomaly ranking problem and propose a re-ranking model based on a commonly used unsupervised network anomaly ranking method. We introduce several new features into the re-ranking model to capture extra information about outliers. Our experimental results based on real datacenter network data demonstrate that the proposed re-ranking model improves the ranking quality over the unsupervised method, especially for insignificant outliers.
机译:近年来,随着现代数据中心网络的不断增长,针对这些数据中心的网络入侵也迅速增长。在这种情况下,系统监视和入侵检测对于控制此类网络的风险至关重要。有许多网络异常检测系统用于识别数据中心网络中的重大异常。但是,他们通常将重点放在检测重大异常上,而常常忽略不重要的异常。现有的异常排名模型在检测无关紧要的异常方面并不准确。当攻击来自无关紧要的异常流量时,这将成为一个问题。在本文中,我们重新审视了网络异常排名问题,并提出了一种基于常用的无监督网络异常排名方法的重新排名模型。我们在重新排序模型中引入了几个新功能,以捕获有关异常值的更多信息。我们基于真实数据中心网络数据的实验结果表明,所提出的重新排序模型比无监督方法提高了排序质量,尤其是对于无关紧要的异常而言。

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