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Behavior Flow Graph Construction from System Logs for Anomaly Analysis

机译:从系统日志进行异常分析的行为流程图构造

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Anomaly analysis plays a significant role in building a secure and reliable system. Raw system logs contain important system information, such as execution paths and execution time. People often use system logs for fault diagnosis and root cause localization. However, due to the complexity of raw system logs, these tasks can be arduous and ineffective. To solve this problem, we propose ETGC (Event Topology Graph Construction), a method for mining event topology graph of the normal execution status of systems. ETGC mines the dependency relationship between events and generates the event topology graph based on the maximum spanning tree. We evaluate the proposed method on data sets of real systems to demonstrate the effectiveness of our approach.
机译:异常分析在构建安全可靠的系统方面发挥着重要作用。原始系统日志包含重要的系统信息,例如执行路径和执行时间。人们经常使用系统日志进行故障诊断和根本原因本地化。但是,由于原始系统日志的复杂性,这些任务可能是艰巨和无效的。为了解决这个问题,我们提出了ETGC(事件拓扑图构造),这是一种用于系统的正常执行状态的事件拓扑图的方法。 ETGC挖掘事件之间的依赖关系,并根据最大生成树生成事件拓扑图。我们评估了真实系统数据集的提议方法,以证明我们方法的有效性。

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