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Improving Anomaly Detection Event Analysis Using the EventRank Algorithm

机译:使用EventRank算法改进异常检测事件分析

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摘要

We discuss an approach to reducing the number of events accepted by anomaly detection systems, based on alternative schemes for interest-ranking. The basic assumption is that regular and periodic usage of a system will yield patterns of events that can be learned by data-mining. Events that deviate from this pattern can then be filtered out and receive special attention. Our approach compares the anomaly detection framework from Cfengine and the EventRank algorithm for the analysis of the event logs. We show that the EventRank algorithm can be used to successfully prune periodic events from real-life data.
机译:我们基于兴趣排名的替代方案,讨论了一种减少异常检测系统接受的事件数量的方法。基本假设是,定期和定期使用系统会产生可以通过数据挖掘学习的事件模式。然后,可以滤除偏离此模式的事件并给予特别注意。我们的方法将Cfengine的异常检测框架与EventRank算法进行了比较,以分析事件日志。我们展示了EventRank算法可用于从实际数据中成功修剪周期性事件。

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