Forecasting at Full Spectrum: Holistic Multi-Granular Traffic Modeling under High-Throughput Inference Regimes
Zhaoyan Wang, Xiangchi Song, In-Young Ko

TL;DR
This paper introduces MultiGran-STGCNFog, a novel traffic forecasting model that effectively fuses multi-granular spatiotemporal features and employs an optimized scheduling algorithm for high-throughput inference in fog computing environments.
Contribution
It presents a new multi-granular spatiotemporal feature fusion model and an efficient scheduling algorithm for distributed inference, improving accuracy and speed in traffic forecasting.
Findings
Outperforms baseline GCN models on real-world datasets
Achieves higher inference throughput with optimized scheduling
Effectively captures interdependent traffic dynamics across scales
Abstract
Notably, current intelligent transportation systems rely heavily on accurate traffic forecasting and swift inference provision to make timely decisions. While Graph Convolutional Networks (GCNs) have shown benefits in modeling complex traffic dependencies, the existing GCN-based approaches cannot fully extract and fuse multi-granular spatiotemporal features across various spatial and temporal scales sufficiently in a complete manner, proven to yield less accurate results. Besides, as extracting multi-granular features across scales has been a promising strategy across domains such as computer vision, natural language processing, and time-series forecasting, pioneering studies have attempted to leverage a similar mechanism for spatiotemporal traffic data mining. However, additional feature extraction branches introduced in prior studies critically increased model complexity and extended…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Advanced Graph Neural Networks · Traffic control and management
