Context-aware knowledge graph framework for traffic speed forecasting using graph neural network
Yatao Zhang, Yi Wang, Song Gao, Martin Raubal

TL;DR
This paper introduces a novel context-aware knowledge graph framework combined with graph neural networks to improve urban traffic speed forecasting by effectively modeling spatial and temporal contexts.
Contribution
It proposes a new CKG-GNN model that integrates spatial and temporal contexts into traffic prediction, demonstrating significant performance improvements over baseline models.
Findings
Optimal embedding strategies identified for spatial and temporal units.
The CKG-GNN model achieves state-of-the-art prediction accuracy for 10-120 min horizons.
Integrating spatial and temporal contexts reduces MAE by up to 0.18 compared to baseline.
Abstract
Human mobility is intricately influenced by urban contexts spatially and temporally, constituting essential domain knowledge in understanding traffic systems. While existing traffic forecasting models primarily rely on raw traffic data and advanced deep learning techniques, incorporating contextual information remains underexplored due to insufficient integration frameworks and the complexity of urban contexts. This study proposes a novel context-aware knowledge graph (CKG) framework to enhance traffic speed forecasting by effectively modeling spatial and temporal contexts. Employing a relation-dependent integration strategy, the framework generates context-aware representations from the spatial and temporal units of CKG to capture spatio-temporal dependencies of urban contexts. A CKG-GNN model, combining the CKG, dual-view multi-head self-attention (MHSA), and graph neural network…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Neural Networks and Applications
MethodsMasked autoencoder · Graph Neural Network · SPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
