Behavior Flow Graph Construction from System Logs for Anomaly Analysis

2019 
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.
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