Ensemble2: Anomaly Detection via EVT-Ensemble Framework for Seasonal KPIs in Communication Network

05/28/2022
by   Shi-Yang Wang, et al.
0

KPI anomaly detection is one important function of network management system. Traditional methods either require prior knowledge or manually set thresholds. To overcome these shortcomings, we propose the Ensemble2 framework, which applies ensemble learning to improve exogenous capabilities. Meanwhile, automatically adjusts thresholds based on extreme value theory. The model is tested on production datasets to verify its effectiveness. We further optimize the model using online learning, and finally running at a speed of  10 pts/s on an Intel i5 platform.

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