CRATOS: Cognition of Reliable Algorithm for Time-series Optimal Solution

@article{Wu2020CRATOSCO,
  title={CRATOS: Cognition of Reliable Algorithm for Time-series Optimal Solution},
  author={Ziling Wu and Ping Liu and Zheng Hu and Jun Wang},
  journal={Proceedings of the 2020 European Symposium on Software Engineering},
  year={2020}
}
  • Ziling WuPing Liu Jun Wang
  • Published 3 March 2020
  • Computer Science
  • Proceedings of the 2020 European Symposium on Software Engineering
Anomaly detection of time series plays an important role in reliability systems engineering. However, in practical application, there is no precisely defined boundary between normal and anomalous behaviors in different application scenarios. Therefore, different anomaly detection algorithms and processes ought to be adopted for time series in different situation. Although such strategy improve the accuracy of anomaly detection, it takes a lot of time for practitioners to configure various… 

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