References

If you find dtaianomaly useful for your work, we would appreciate the following citation [7]:

@article{carpentier2025dtaianomaly,
      title={{dtaianomaly: A Python library for time series anomaly detection}},
      author={Louis Carpentier and Nick Seeuws and Wannes Meert and Mathias Verbeke},
      year={2025},
      eprint={2502.14381},
      archivePrefix={arXiv},
      primaryClass={cs.LG},
      journal={}
}

The full list of references can be found below.

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