核心概念
The author proposes a novel Spatio-Temporal Self-Supervised Learning (ST-SSL) framework to enhance traffic pattern representations by addressing spatial and temporal heterogeneity through adaptive self-supervised learning paradigms.
摘要
The content introduces the ST-SSL framework for traffic flow prediction, emphasizing the importance of modeling spatial and temporal heterogeneity. The proposed method outperforms various baselines in experiments on real-world datasets, showcasing its robustness and effectiveness in handling different types of spatial regions and time periods.
Key Points:
- Introduction of ST-SSL framework for traffic flow prediction.
- Addressing spatial and temporal heterogeneity through self-supervised learning.
- Superior performance compared to various baselines in experiments.
- Robustness analysis on different types of spatial regions and time periods.
- Ablation study showing the impact of different sub-modules on performance.
The Spatio-Temporal Self-Supervised Learning (ST-SSL) framework is designed to improve traffic flow prediction by considering both spatial and temporal heterogeneity. Through adaptive data augmentation and self-supervised learning tasks, ST-SSL outperforms existing methods in predicting traffic patterns accurately across various scenarios.
統計資料
Experiments on four benchmark datasets demonstrate that ST-SSL consistently outperforms various state-of-the-art baselines.
Most models ignore spatio-temporal heterogeneity, leading to suboptimal results over skewed-distributed traffic data.
Spatial-temporal synchronous graph convolutional networks capture complex localized correlations effectively.
引述
"Robust prediction of citywide traffic flows at different time periods plays a crucial role in intelligent transportation systems."
"Our ST-SSL consistently outperforms various state-of-the-art baselines in experiments on four benchmark datasets."