This is the repository for the collection of Graph Neural Network for Traffic Forecasting.
If you find this repository helpful, you may consider cite our relevant work:
- Jiang W, Luo J. Graph Neural Network for Traffic Forecasting: A Survey[J]. Expert Systems with Applications, 2022. Link
- Jiang W, Luo J. Big Data for Traffic Estimation and Prediction: A Survey of Data and Tools[J]. Applied System Innovation. 2022; 5(1):23. Link
- Jiang W. Bike sharing usage prediction with deep learning: a survey[J]. Neural Computing and Applications, 2022, 34(18): 15369-15385. Link
- Jiang W, Luo J, He M, Gu W. Graph Neural Network for Traffic Forecasting: The Research Progress[J]. ISPRS International Journal of Geo-Information, 2023. Link
For a wider collection of deep learning for traffic forecasting, you may check: DL4Traffic
Advertisement: We would like to cordially invite you to submit a paper to our special issue on "Graph Neural Network for Traffic Forecasting" for Information Fusion (SCI-indexed, Impact Factor: 17.564).
- Special issue website: https://www.sciencedirect.com/journal/information-fusion/about/call-for-papers#graph-neural-network-for-traffic-forecasting
- Deadline for manuscript submissions: 1 December 2023.
Advertisement: We would like to cordially invite you to submit a paper to our Topical Collection on "Deep Neural Networks for Traffic Forecasting" for Neural Computing and Applications (SCI-indexed, Impact Factor: 6.0).
- Topical Collection website: https://www.springer.com/journal/521/updates/26215426
- Deadline for manuscript submissions: 1 April 2024.
Advertisement: If you are interested in maintaining this repository, feel free to drop me an email.
Some simple paper statistics results are as follows.
Paper year count:
Top conferences with paper counts:
Top journals with paper counts:
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Deep Learning Time Series Forecasting Link
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A collection of research on spatio-temporal data mining Link
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Some TrafficFlowForecasting Solutions Link
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Urban-computing-papers Link
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Awesome-Mobility-Machine-Learning-Contents Link
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Traffic Prediction Link
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Paper & Code & Dataset Collection of Spatial-Temporal Data Mining. Link
- Strategic Transport Planning Dataset Link
Description: A graph based strategic transport planning dataset, aimed at creating the next generation of deep graph neural networks for transfer learning. Based on simulation results of the Four Step Model in PTV Visum. Relevant Thesis: Development of a Deep Learning Surrogate for the Four-Step Transportation Model
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- Ju W, Zhao Y, et al. COOL: A conjoint perspective on spatio-temporal graph neural network for traffic forecasting[J]. Information Fusion, 2024. Link
- Fang S, Ji W, Xiang S, et al. PreSTNet: Pre-trained Spatio-Temporal Network for traffic forecasting[J]. Information Fusion, 2024, 106: 102241. Link Code
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Qi X, Yao J, Wang P, et al. Combining weather factors to predict traffic flow: A spatial‐temporal fusion graph convolutional network‐based deep learning approach[J]. IET Intelligent Transport Systems, 2023. Link
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Chang Z, Liu C, Jia J. STA-GCN: Spatial-Temporal Self-Attention Graph Convolutional Networks for Traffic-Flow Prediction[J]. Applied Sciences, 2023, 13(11): 6796. Link
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Han X, Zhu G, Zhao L, et al. Ollivier–Ricci Curvature Based Spatio-Temporal Graph Neural Networks for Traffic Flow Forecasting[J]. Symmetry, 2023, 15(5): 995. Link
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Liu X, Zeng J, Zhu R, et al. PGSLM: Edge-enabled probabilistic graph structure learning model for traffic forecasting in Internet of vehicles[J]. China Communications, 2023, 20(4): 270-286. Link
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