A Compact Model for Large-Scale Time Series Forecasting
Yeh, Chin-Chia Michael, Fan, Xiran, Jiang, Zhimeng, Fan, Yujie, Chen, Huiyuan, Saini, Uday Singh, Lai, Vivian, Dai, Xin, Wang, Junpeng, Zhuang, Zhongfang, Wang, Liang, Zheng, Yan
–arXiv.org Artificial Intelligence
Spatio-temporal data, which commonly arise in real-world applications such as traffic monitoring, financial transactions, and ride-share demands, represent a special category of multivariate time series. They exhibit two distinct characteristics: high dimensionality and commensurability across spatial locations. These attributes call for computationally efficient modeling approaches and facilitate the use of univariate forecasting models in a channel-independent fashion. SparseTSF, a recently introduced competitive univariate forecasting model, harnesses periodicity to achieve compactness by concentrating on cross-period dynamics, thereby extending the Pareto frontier with respect to model size and predictive performance. Nonetheless, it underperforms on spatio-temporal data due to an inadequate capture of intra-period temporal dependencies. To address this shortcoming, we propose UltraSTF, which integrates a cross-period forecasting module with an ultra-compact shape bank component. Our model effectively detects recurring patterns in time series through the attention mechanism of the shape bank component, thereby strengthening its ability to learn intra-period dynamics. UltraSTF achieves state-of-the-art performance on the LargeST benchmark while employing fewer than 0.2% of the parameters required by the second-best approaches, thus further extending the Pareto frontier of existing methods.
arXiv.org Artificial Intelligence
Feb-27-2025
- Country:
- North America > United States > California
- Los Angeles County > Los Angeles (0.04)
- San Diego County > San Diego (0.04)
- North America > United States > California
- Genre:
- Research Report > New Finding (0.68)
- Technology: