首页> 外文会议>6th ACM conference on emerging networking experiments and technologies 2010 >MAWILab : Combining Diverse Anomaly Detectors for Automated Anomaly Labeling and Performance Benchmarking
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MAWILab : Combining Diverse Anomaly Detectors for Automated Anomaly Labeling and Performance Benchmarking

机译:MAWILab:组合各种异常检测器以进行自动异常标记和性能基准测试

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Evaluating anomaly detectors is a crucial task in traffic monitoring made particularly difficult due to the lack of ground truth. The goal of the present article is to assist researchers in the evaluation of detectors by providing them with labeled anomaly traffic traces. We aim at automatically finding anomalies in the MAWI archive using a new methodology that combines different and independent detectors. A key challenge is to compare the alarms raised by these detectors, though they operate at different traffic granularities. The main contribution is to propose a reliable graph-based methodology that combines any anomaly detector outputs. We evaluated four unsupervised combination strategies; the best is the one that is based on dimensionality reduction. The synergy between anomaly detectors permits to detect twice as many anomalies as the most accurate detector, and to reject numerous false positive alarms reported by the detectors. Significant anomalous traffic features are extracted from reported alarms, hence the labels assigned to the MAWI archive are concise. The results on the MAWI traffic are publicly available and updated daily. Also, this approach permits to include the results of upcoming anomaly detectors so as to improve over time the quality and variety of labels.
机译:评估异常检测器是交通监控中的一项关键任务,由于缺乏地面真实性,交通监控变得异常困难。本文的目的是通过为检测器提供标记的异常流量跟踪来帮助研究人员进行检测器评估。我们旨在使用结合了不同且独立的探测器的新方法,自动在MAWI档案中查找异常。一个关键的挑战是比较这些探测器发出的警报,尽管它们以不同的流量粒度运行。主要贡献是提出一种可靠的基于图的方法,该方法结合了任何异常检测器的输出。我们评估了四种无监督的组合策略;最好的是基于降维的方法。异常检测器之间的协同作用允许检测到最准确的检测器两倍的异常,并拒绝检测器报告的大量误报。从报告的警报中提取了重要的异常交通特征,因此分配给MAWI存档的标签简洁明了。 MAWI流量的结果可公开获得,并每天更新。而且,该方法允许包括即将到来的异常检测器的结果,以便随着时间的推移改善标签的质量和种类。

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