Automatic Classification Rules for Anomaly Detection in Time-series

Anomaly detection in time-series is an important issue in many applications. It is particularly hard to accurately detect multiple anomalies in time-series. Pattern discovery and rule extraction are effective solutions for allowing multiple anomaly detection.

In this paper, we define a Composition-based Decision Tree algorithm that automatically discovers and generates human-understandable classification rules for multiple anomaly detection in time-series.

To evaluate our solution, our algorithm is compared to other anomaly detection algorithms on real datasets and benchmarks.

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