Antoine Guillaume, Christel Vrain, Elloumi Wael
Shapelet-based algorithms are widely used for time series classification because of their ease of interpretation, but they are currently outperformed by recent state-of-the-art approaches. We present a new formulation of time series shapelets including the notion of dilation, and we introduce a new shapelet feature to enhance their discriminative power for classification. Experiments performed on 112 datasets show that our method improves on the state-of-the-art shapelet algorithm, and achieves comparable accuracy to recent state-of-the-art approaches, without sacrificing neither scalability, nor interpretability.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Time Series Classification | ACSF1 | Accuracy(30-fold) | 0.8433333333333333 | R_DST_Ensemble |
| Time Series Classification | ArrowHead | Accuracy(30-fold) | 0.8912380952380949 | R_DST_Ensemble |
| Time Series Classification | Beef | Accuracy(30-fold) | 0.7511111111111111 | R_DST_Ensemble |
| Time Series Classification | Adiac | Accuracy(30-fold) | 0.80230179028133 | R_DST_Ensemble |
| Time Series Classification | Earthquakes | Accuracy(30-fold) | 0.7390887290167865 | R_DST_Ensemble |
| Time Series Classification | ECG200 | Accuracy(30-fold) | 0.9016666666666667 | R_DST_Ensemble |
| Time Series Classification | ECG5000 | Accuracy(30-fold) | 0.9467629629629628 | R_DST_Ensemble |
| Time Series Classification | Wafer | Accuracy | 0.9999513303049968 | R_DST_Ensemble |
| Time Series Classification | Wafer | Accuracy(30-fold) | 0.9999513303049968 | R_DST_Ensemble |