Traffic systems are quintessential complex systems, characterized by nonlinear interactions, multiscale dynamics, and emergent spatiotemporal patterns over complex networks. These properties make traffic prediction highly challenging, as it requires jointly modeling stable global topology and time-varying local dependencies. Existing graph neural networks often rely on predefined or static learnable graphs, overlooking hidden dynamic structures, while most RNN- or CNN-based approaches struggle with long-range temporal dependencies. This paper proposes a Spatiotemporal Causal–Trend Network (SCTN) tailored to complex transportation networks. First, we introduce a dual-path adaptive graph learning scheme: a static graph that captures global, topology-aligned dependencies of the complex network, and a dynamic graph that adapts to localized, time-varying interactions. Second, we design a Gated Temporal Attention Module (GTAM) with a causal–trend attention mechanism that integrates 1D and causal convolutions to reinforce temporal causality and local trend awareness while maintaining long-range attention. Extensive experiments on two real-world PeMS traffic flow datasets demonstrate that SCTN consistently achieves superior accuracy compared to strong baselines, reducing by 3.5–4.5% over the best-performing existing methods, highlighting its effectiveness for modeling the intrinsic complexity of urban traffic systems.
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Xingyu Feng
Nanjing University of Information Science and Technology
Lina Sheng
Wuxi Taihu Hospital
Linglong Zhu
Ministry of Public Security of the People's Republic of China
SHILAP Revista de lepidopterología
Mathematics
Nanjing University of Information Science and Technology
Ministry of Public Security of the People's Republic of China
Wuxi Taihu Hospital
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Feng et al. (Tue,) studied this question.
synapsesocial.com/papers/69a75b6cc6e9836116a22b4c — DOI: https://doi.org/10.3390/math14030443