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Steering the LoCoMotif: Using Domain Knowledge in Time Series Motif Discovery

17 February 2025
Aras Yurtman
Daan Van Wesenbeeck
Wannes Meert
Hendrik Blockeel
    AI4TS
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Abstract

Time Series Motif Discovery (TSMD) identifies repeating patterns in time series data, but its unsupervised nature might result in motifs that are not interesting to the user. To address this, we propose a framework that allows the user to impose constraints on the motifs to be discovered, where constraints can easily be defined according to the properties of the desired motifs in the application domain. We also propose an efficient implementation of the framework, the LoCoMotif-DoK algorithm. We demonstrate that LoCoMotif-DoK can effectively leverage domain knowledge in real and synthetic data, outperforming other TSMD techniques which only support a limited form of domain knowledge.

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@article{yurtman2025_2502.11850,
  title={ Steering the LoCoMotif: Using Domain Knowledge in Time Series Motif Discovery },
  author={ Aras Yurtman and Daan Van Wesenbeeck and Wannes Meert and Hendrik Blockeel },
  journal={arXiv preprint arXiv:2502.11850},
  year={ 2025 }
}
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