TY - GEN
T1 - Make Graph Neural Networks Great Again
T2 - 33rd International Joint Conference on Artificial Intelligence, IJCAI 2024
AU - Zhou, Yicheng
AU - Wang, Pengfei
AU - Dong, Hao
AU - Zhang, Denghui
AU - Yang, Dingqi
AU - Fu, Yanjie
AU - Wang, Pengyang
N1 - Publisher Copyright:
© 2024 International Joint Conferences on Artificial Intelligence. All rights reserved.
PY - 2024
Y1 - 2024
N2 - Urban traffic speed prediction aims to estimate the future traffic speed for improving urban transportation services.Enormous efforts have been made to exploit Graph Neural Networks (GNNs) for modeling spatial correlations and temporal dependencies of traffic speed evolving patterns, regularized by graph topology.While achieving promising results, current traffic speed prediction methods still suffer from ignoring topology-free patterns, which cannot be captured by GNNs.To tackle this challenge, we propose a generic model for enabling the current GNN-based methods to preserve topology-free patterns.Specifically, we first develop a Dual Cross-Scale Transformer (DCST) architecture, including a Spatial Transformer and a Temporal Transformer, to preserve the cross-scale topology-free patterns and associated dynamics, respectively.Then, to further integrate both topology-regularized/-free patterns, we propose a distillation-style learning framework, in which the existing GNN-based methods are considered as the teacher model, and the proposed DCST architecture is considered as the student model.The teacher model would inject the learned topology-regularized patterns into the student model for integrating topology-free patterns.The extensive experimental results demonstrated the effectiveness of our methods.
AB - Urban traffic speed prediction aims to estimate the future traffic speed for improving urban transportation services.Enormous efforts have been made to exploit Graph Neural Networks (GNNs) for modeling spatial correlations and temporal dependencies of traffic speed evolving patterns, regularized by graph topology.While achieving promising results, current traffic speed prediction methods still suffer from ignoring topology-free patterns, which cannot be captured by GNNs.To tackle this challenge, we propose a generic model for enabling the current GNN-based methods to preserve topology-free patterns.Specifically, we first develop a Dual Cross-Scale Transformer (DCST) architecture, including a Spatial Transformer and a Temporal Transformer, to preserve the cross-scale topology-free patterns and associated dynamics, respectively.Then, to further integrate both topology-regularized/-free patterns, we propose a distillation-style learning framework, in which the existing GNN-based methods are considered as the teacher model, and the proposed DCST architecture is considered as the student model.The teacher model would inject the learned topology-regularized patterns into the student model for integrating topology-free patterns.The extensive experimental results demonstrated the effectiveness of our methods.
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M3 - Conference contribution
AN - SCOPUS:85204284744
T3 - IJCAI International Joint Conference on Artificial Intelligence
SP - 2607
EP - 2615
BT - Proceedings of the 33rd International Joint Conference on Artificial Intelligence, IJCAI 2024
A2 - Larson, Kate
Y2 - 3 August 2024 through 9 August 2024
ER -