Description
This dataset includes the resulting data of the research: Structure-preserving contrastive learning for spatial time series. It includes precomputed distance matrices, logs and results from hyperparameter grid search, trained encoder checkpoints, as well as evaluation metrics for UEA classification and traffic prediction tasks. The research is experimental and focuses on enhancing self-supervised contrastive learning by preserving fine‐grained spatio-temporal similarity structures. The proposed methods are applied to public UEA archive datasets of multivariate time series and specialised macro- and micro-traffic datasets. The scripts that produced these data are open-sourced at https://github.com/Yiru-Jiao/SPCLT
| Date made available | 2025 |
|---|---|
| Publisher | TU Delft - 4TU.ResearchData |
| Date of data production | 2025 |
Research output
- 1 Preprint
-
Structure-preserving contrastive learning for spatial time series
Jiao, Y., van Cranenburgh, S., Calvert, S. & van Lint, H., 2025, ArXiv, 30 p.Research output: Working paper/Preprint › Preprint
Open Access
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