ST-ReP: Learning Predictive Representations Efficiently for Spatial-Temporal Forecasting
Zheng, Qi, Yao, Zihao, Zhang, Yaying
–arXiv.org Artificial Intelligence
Spatial-temporal forecasting is crucial and widely applicable in various domains such as traffic, energy, and climate. Benefiting from the abundance of unlabeled spatial-temporal data, self-supervised methods are increasingly adapted to learn spatial-temporal representations. However, it encounters three key challenges: 1) the difficulty in selecting reliable negative pairs due to the homogeneity of variables, hindering contrastive learning methods; 2) overlooking spatial correlations across variables over time; 3) limitations of efficiency and scalability in existing self-supervised learning methods. To tackle these, we propose a lightweight representation-learning model ST-ReP, integrating current value reconstruction and future value prediction into the pre-training framework for spatial-temporal forecasting. And we design a new spatial-temporal encoder to model fine-grained relationships. Moreover, multi-time scale analysis is incorporated into the self-supervised loss to enhance predictive capability. Experimental results across diverse domains demonstrate that the proposed model surpasses pre-training-based baselines, showcasing its ability to learn compact and semantically enriched representations while exhibiting superior scalability.
arXiv.org Artificial Intelligence
Dec-19-2024
- Country:
- North America > United States
- California (0.04)
- New York > New York County
- New York City (0.04)
- Asia > China
- Tianjin Province > Tianjin (0.04)
- Shanghai > Shanghai (0.04)
- North America > United States
- Genre:
- Research Report (1.00)
- Industry:
- Energy (0.68)
- Technology: