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Graph Neural Networks in Intelligent Transportation Systems: Advances, Applications and Trends (2401.00713v3)

Published 1 Jan 2024 in cs.LG

Abstract: Intelligent Transportation System (ITS) is crucial for improving traffic congestion, reducing accidents, optimizing urban planning, and more. However, the complexity of traffic networks has rendered traditional machine learning and statistical methods less effective. With the advent of artificial intelligence, deep learning frameworks have achieved remarkable progress across various fields and are now considered highly effective in many areas. Since 2019, Graph Neural Networks (GNNs) have emerged as a particularly promising deep learning approach within the ITS domain, owing to their robust ability to model graph-structured data and address complex problems. Consequently, there has been increasing scholarly attention to the applications of GNNs in transportation, which have demonstrated excellent performance. Nevertheless, current research predominantly focuses on traffic forecasting, with other ITS domains, such as autonomous vehicles and demand prediction, receiving less attention. This paper aims to review the applications of GNNs across six representative and emerging ITS research areas: traffic forecasting, vehicle control system, traffic signal control, transportation safety, demand prediction, and parking management. We have examined a wide range of graph-related studies from 2018 to 2023, summarizing their methodologies, features, and contributions in detailed tables and lists. Additionally, we identify the challenges of applying GNNs in ITS and propose potential future research directions.

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References (224)
  1. Computing graph neural networks: A survey from algorithms to accelerators. CSUR 54, 9 (2021).
  2. Dharyll Prince Mariscal Abellana. 2023. Multivariate Travel Time Forecasting in a Traffic Network Using Fuzzy Cognitive Mapping. In AIC.
  3. Mohammed S Ahmed and Allen R Cook. 1979. Analysis of freeway traffic time-series data by using Box-Jenkins techniques. Number 722.
  4. Hard to park? Estimating parking difficulty at scale. In KDD.
  5. History of intelligent transportation systems. Technical Report.
  6. STG2Seq: Spatial-Temporal Graph to Sequence Model for Multi-step Passenger Demand Forecasting. In IJCAI.
  7. Adaptive graph convolutional recurrent network for traffic forecasting. In NeurIPS.
  8. Hypergraph convolution and hypergraph attention. Pattern Recognition 110 (2021).
  9. Analyzing the expressive power of graph neural networks in a spectral perspective. In ICLR.
  10. Bridging the gap between spectral and spatial domains in graph neural networks. arXiv preprint arXiv:2003.11702 (2020).
  11. A spatiotemporal deep learning approach for citywide short-term crash risk prediction with multi-source data. Accident Analysis & Prevention 122 (2019).
  12. Travel time forecasting and dynamic origin-destination estimation for freeways based on bluetooth traffic monitoring. TRR 2175, 1 (2010).
  13. Graph neural networks with convolutional arma filters. TPAMI 44, 7 (2021).
  14. Time series analysis: forecasting and control. John Wiley & Sons.
  15. How attentive are graph attention networks? arXiv preprint arXiv:2105.14491 (2021).
  16. Spatial-temporal graph neural network for traffic forecasting: An overview and open research issues. Applied Intelligence 52, 3 (2022).
  17. Transportation Network Models: Past Problems and Prospects for the 1980s. International Journal of Physical Distribution & Materials Management 11, 8 (1981).
  18. Scout: Socially-consistent and understandable graph attention network for trajectory prediction of vehicles and vrus. In IEEE Intelligent Vehicles Symposium.
  19. T-H Hubert Chan and Zhibin Liang. 2020. Generalizing the hypergraph laplacian via a diffusion process with mediators. TCS 806 (2020).
  20. Forecasting trajectory and behavior of road-agents using spectral clustering in graph-lstms. IEEE Robotics and Automation Letters 5, 3 (2020).
  21. Dynamic near-term traffic flow prediction: system-oriented approach based on past experiences. IET intelligent transport systems 6, 3 (2012), 292–305.
  22. Sdcae: Stack denoising convolutional autoencoder model for accident risk prediction via traffic big data. In CBD.
  23. Bidirectional spatial-temporal adaptive transformer for Urban traffic flow forecasting. TNNLS (2022).
  24. Simple and deep graph convolutional networks. In ICML.
  25. On the Properties of Neural Machine Translation: Encoder-Decoder Approaches. In SSST@EMNLP.
  26. Multi-agent deep reinforcement learning for large-scale traffic signal control. TITS 21, 3 (2019).
  27. Fan RK Chung. 1997. Spectral graph theory. Vol. 92. American Mathematical Soc.
  28. Antonio Comi and Antonio Polimeni. 2020. Bus travel time: Experimental evidence and forecasting. Forecasting 2, 3 (2020).
  29. Traffic graph convolutional recurrent neural network: A deep learning framework for network-scale traffic learning and forecasting. TITS 21, 11 (2019).
  30. Convolutional neural networks on graphs with fast localized spectral filtering. In NeurIPS, Vol. 29.
  31. Carl Doersch. 2016. Tutorial on variational autoencoders. arXiv preprint arXiv:1606.05908 (2016).
  32. Panagiotis Fafoutellis and Eleni I Vlahogianni. 2023. Traffic demand prediction using a social multiplex networks representation on a multimodal and multisource dataset. IJTST (2023).
  33. Deep learning for intelligent traffic sensing and prediction: recent advances and future challenges. CCF Transactions on Pervasive Computing and Interaction 2 (2020).
  34. Spatial-Temporal Graph ODE Networks for Traffic Flow Forecasting. In KDD.
  35. Predicting vacant parking space availability zone-wisely: A hybrid deep learning approach. Complex & Intelligent Systems 8, 5 (2022).
  36. Hypergraph neural networks. In AAAI.
  37. Predict then propagate: Graph neural networks meet personalized pagerank. arXiv preprint arXiv:1810.05997 (2018).
  38. Spatiotemporal multi-graph convolution network for ride-hailing demand forecasting. In AAAI.
  39. Deep learning support for intelligent transportation systems. Transactions on Emerging Telecommunications Technologies 32, 3 (2021).
  40. Big data driven dynamic driving cycle development for busses in urban public transportation. Transportation Research Part D: Transport and Environment 51 (2017).
  41. Ge Guo and Wei Yuan. 2020. Short-term traffic speed forecasting based on graph attention temporal convolutional networks. Neurocomputing 410 (2020).
  42. Pct: Point cloud transformer. Computational Visual Media 7 (2021).
  43. Attention based spatial-temporal graph convolutional networks for traffic flow forecasting. In AAAI.
  44. Deep learning for 3d point clouds: A survey. TPAMI 43, 12 (2020).
  45. Cooperative multi-agent control using deep reinforcement learning. In Autonomous Agents and Multiagent Systems: AAMAS Workshops.
  46. A reinforcement learning-based distributed control scheme for cooperative intersection traffic control. IEEE Access (2023).
  47. Applications of deep learning in intelligent transportation systems. Journal of Big Data Analytics in Transportation 2 (2020).
  48. Inductive representation learning on large graphs. In NeurIPS.
  49. William L Hamilton. 2020. Graph representation learning. Morgan & Claypool Publishers.
  50. Dynamic and multi-faceted spatio-temporal deep learning for traffic speed forecasting. In KDD.
  51. Transrefer3d: Entity-and-relation aware transformer for fine-grained 3d visual grounding. In Proceedings of the 29th ACM International Conference on Multimedia.
  52. Deep convolutional networks on graph-structured data. arXiv preprint arXiv:1506.05163 (2015).
  53. Sepp Hochreiter and Jürgen Schmidhuber. 1997. Long short-term memory. Neural Computation 9, 8 (1997).
  54. Baixiang Huang and Bryan Hooi. 2022. Traffic Accident Prediction using Graph Neural Networks: New Datasets and the TRAVEL Model. Traffic 27, 29 (2022).
  55. Deep dynamic fusion network for traffic accident forecasting. In CIKM.
  56. A dynamical spatial-temporal graph neural network for traffic demand prediction. Information Sciences 594 (2022).
  57. Sparse data-based urban road travel speed prediction using probabilistic principal component analysis. IEEE Access 6 (2018).
  58. Multimodal trajectory prediction: A survey. arXiv preprint arXiv:2302.10463 (2023).
  59. Stgat: Modeling spatial-temporal interactions for human trajectory prediction. In ICCV.
  60. A survey on trajectory-prediction methods for autonomous driving. IEEE Transactions on Intelligent Vehicles 7, 3 (2022).
  61. Deep Spatial–Temporal Graph Modeling of Urban Traffic Accident Prediction. In The International Conference on Image, Vision and Intelligent Systems.
  62. Hierarchical Spatio–Temporal Graph Convolutional Networks and Transformer Network for Traffic Flow Forecasting. TITS 24, 4 (2023).
  63. Cooperative control for multi-intersection traffic signal based on deep reinforcement learning and imitation learning. IEEE Access 8 (2020).
  64. Hrag-Harout Jebamikyous and Rasha Kashef. 2022. Autonomous vehicles perception (avp) using deep learning: Modeling, assessment, and challenges. IEEE Access 10 (2022).
  65. Scale-net: Scalable vehicle trajectory prediction network under random number of interacting vehicles via edge-enhanced graph convolutional neural network. In IROS.
  66. Data driven congestion trends prediction of urban transportation. IEEE Internet of Things Journal 5, 2 (2017).
  67. Hdgt: Heterogeneous driving graph transformer for multi-agent trajectory prediction via scene encoding. TPAMI (2023).
  68. PE Jian John Lu PHD and Lakshminarayan Rajaram. 2013. Evaluation of intelligent transportation system operations using logistic regression models. Institute of Transportation Engineers. ITE Journal 83, 3 (2013), 40.
  69. Weiwei Jiang and Jiayun Luo. 2022. Graph neural network for traffic forecasting: A survey. ESWA 207 (2022).
  70. Graph Neural Network for Traffic Forecasting: The Research Progress. ISPRS International Journal of Geo-Information 12, 3 (2023).
  71. Spatio-Temporal Graph Neural Networks for Predictive Learning in Urban Computing: A Survey. TKDE (2023).
  72. Deep multi-view graph-based network for citywide ride-hailing demand prediction. Neurocomputing 510 (2022).
  73. Yiannis Kamarianakis and Poulicos Prastacos. 2003. Forecasting traffic flow conditions in an urban network: Comparison of multivariate and univariate approaches. TRR 1857, 1 (2003).
  74. Urban traffic travel time short-term prediction model based on spatio-temporal feature extraction. JAT 2020 (2020).
  75. Link traffic speed forecasting using convolutional attention-based gated recurrent unit. Applied Intelligence 51 (2021).
  76. Thomas N Kipf and Max Welling. 2016. Variational graph auto-encoders. arXiv preprint arXiv:1611.07308 (2016).
  77. Thomas N Kipf and Max Welling. 2017. Semi-supervised classification with graph convolutional networks. In ICLR.
  78. Philip Koopman and Michael Wagner. 2017. Autonomous vehicle safety: An interdisciplinary challenge. ITSM 9, 1 (2017).
  79. A survey of deep learning applications to autonomous vehicle control. TITS 22, 2 (2020).
  80. DSTAGNN: Dynamic Spatial-Temporal Aware Graph Neural Network for Traffic Flow Forecasting. In ICML.
  81. Temporal convolutional networks for action segmentation and detection. In CVPR.
  82. PGDRT: Prediction Demand Based on Graph Convolutional Network for Regional Demand-Responsive Transport. JAT (2023).
  83. Short-term traffic prediction with deep neural networks: A survey. IEEE Access 9 (2021).
  84. Sangsoo Lee and Daniel B Fambro. 1999. Application of subset autoregressive integrated moving average model for short-term freeway traffic volume forecasting. TRR 1678, 1 (1999).
  85. Moshe Levin and Yen-Der Tsao. 1980. On forecasting freeway occupancies and volumes (abridgment). TRR 773 (1980).
  86. Predicting path failure in time-evolving graphs. In KDD.
  87. PAG-TSN: Ridership Demand Forecasting Model for Shared Travel Services of Smart Transportation. TITS (2023).
  88. Spatio-temporal graph dual-attention network for multi-agent prediction and tracking. TITS 23, 8 (2022).
  89. Mengzhang Li and Zhanxing Zhu. 2021. Spatial-temporal fusion graph neural networks for traffic flow forecasting. In AAAI.
  90. Adaptive graph convolutional neural networks. In AAAI.
  91. Deep imitation learning for traffic signal control and operations based on graph convolutional neural networks. In ITSC.
  92. Grip: Graph-based interaction-aware trajectory prediction. In ITSC.
  93. Gated graph sequence neural networks. arXiv preprint arXiv:1511.05493 (2015).
  94. Graph Neural Network for spatiotemporal data: methods and applications. arXiv preprint arXiv:2306.00012 (2023).
  95. Graph Convolutional Recurrent Neural Network: Data-Driven Traffic Forecasting. (2017).
  96. Diffusion Convolutional Recurrent Neural Network: Data-Driven Traffic Forecasting. In ICLR.
  97. MFGCN: A Multimodal Fusion Graph Convolutional Network for Online Car-hailing Demand Prediction. IEEE Intelligent Systems (2023).
  98. Manxi Lin and Aasa Feragen. 2022. diffconv: Analyzing irregular point clouds with an irregular view. In European Conference on Computer Vision. Springer.
  99. Intelligent transportation system (ITS): Concept, challenge and opportunity. In BigDataSecurity.
  100. Yi SUN Kaixiang LIN and Ali Kashif Bashir. 2023. KeyLight: Intelligent Traffic Signal Control Method Based on Improved Graph Neural Network. IEEE Transactions on Consumer Electronics (2023).
  101. Convolution in the cloud: Learning deformable kernels in 3d graph convolution networks for point cloud analysis. In CVPR.
  102. Attention-based Spatial-Temporal Graph Convolutional Recurrent Networks for Traffic Forecasting. arXiv preprint arXiv:2302.12973 (2023).
  103. GraphSAGE-based traffic speed forecasting for segment network with sparse data. TITS 23, 3 (2020).
  104. A scientometric review of research on traffic forecasting in transportation. IET Intelligent Transport Systems 15, 1 (2021).
  105. TAP: Traffic Accident Profiling via Multi-Task Spatio-Temporal Graph Representation Learning. TKDD 17, 4 (2023).
  106. A Multi-modal Hypergraph Neural Network via Parametric Filtering and Feature Sampling. TBD (2023).
  107. 3DCTN: 3D convolution-transformer network for point cloud classification. TITS 23, 12 (2022).
  108. Spatiotemporal traffic flow prediction with KNN and LSTM. JAT (2019).
  109. Helmut Lütkepohl. 2005. New introduction to multiple time series analysis. Springer Science & Business Media.
  110. Bus travel time prediction with real-time traffic information. Transportation Research Part C: Emerging Technologies 105 (2019).
  111. Jinming Ma and Feng Wu. 2022. Feudal Multi-Agent Reinforcement Learning with Adaptive Network Partition for Traffic Signal Control. arXiv preprint arXiv:2205.13836 (2022).
  112. Jinming Ma and Feng Wu. 2023. Learning to Coordinate Traffic Signals With Adaptive Network Partition. TITS (2023).
  113. Transfer Learning Method in Reinforcement Learning-based Traffic Signal Control. In GCCE.
  114. A dynamic ensemble deep deterministic policy gradient recursive network for spatiotemporal traffic speed forecasting in an urban road network. Digital Signal Processing 129 (2022).
  115. Social-stgcnn: A social spatio-temporal graph convolutional neural network for human trajectory prediction. In CVPR.
  116. Ray Mundy. 1981. Management of Public Transportation Systems in the 1980s:(the Emergence of Paraprivate Transportation). Department of Marketing and Transportation, College of Business.
  117. Semi-decentralized Inference in Heterogeneous Graph Neural Networks for Traffic Demand Forecasting: An Edge-Computing Approach. arXiv preprint arXiv:2303.00524 (2023).
  118. Traffic signal control based on reinforcement learning with graph convolutional neural nets. In ITSC.
  119. Prospects and challenges of Metaverse application in data-driven intelligent transportation systems. IET Intelligent Transport Systems 17, 1 (2023).
  120. Graph Neural Networks for Intelligent Transportation Systems: A Survey. TITS (2023).
  121. A deep learning approach to the citywide traffic accident risk prediction. In ITSC.
  122. Du-parking: Spatio-temporal big data tells you realtime parking availability. In KDD.
  123. SST-GNN: simplified spatio-temporal traffic forecasting model using graph neural network. In PAKDD.
  124. Takumi Saiki and Sachiyo Arai. 2023. Flexible Traffic Signal Control via Multi-objective Reinforcement Learning. IEEE Access (2023).
  125. Smart city real-time data-driven transportation simulation. In Winter Simulation Conference.
  126. The graph neural network model. IEEE Transactions on Neural Networks 20, 1 (2008).
  127. A study on deep reinforcement learning based traffic signal control for mitigating traffic congestion. In ECBIOS.
  128. Mining point cloud local structures by kernel correlation and graph pooling. In CVPR.
  129. Graph-based spatial-temporal convolutional network for vehicle trajectory prediction in autonomous driving. TITS 23, 10 (2022).
  130. Improving the generalizability and robustness of large-scale traffic signal control. arXiv preprint arXiv:2306.01925 (2023).
  131. The Emmerging Field of Signal Processing on Graphs. IEEE Signal Proc. Magazine (2013).
  132. Martin Simonovsky and Nikos Komodakis. 2017. Dynamic edge-conditioned filters in convolutional neural networks on graphs. In CVPR.
  133. Spatial-temporal synchronous graph convolutional networks: A new framework for spatial-temporal network data forecasting. In AAAI.
  134. Learning multiagent communication with backpropagation. In NeurIPS.
  135. Zhanquan Sun and Geoffrey Fox. 2014. Traffic flow forecasting based on combination of multidimensional scaling and SVM. International Journal of Intelligent Transportation Systems Research 12, 1 (2014).
  136. Joseph S Sussman. 2008. Perspectives on intelligent transportation systems (ITS). Springer Science & Business Media.
  137. Sequence to sequence learning with neural networks. In NeurIPS.
  138. Rgcnn: Regularized graph cnn for point cloud segmentation. In ACMMM.
  139. A survey on modern deep neural network for traffic prediction: Trends, methods and challenges. TKDE 34, 4 (2020).
  140. The simpler the better: a unified approach to predicting original taxi demands based on large-scale online platforms. In KDD.
  141. The path most traveled: Travel demand estimation using big data resources. Transportation Research Part C: Emerging Technologies 58 (2015).
  142. DeepTRANS: a deep learning system for public bus travel time estimation using traffic forecasting. VLDB 13, 12 (2020).
  143. MSGNN: A Multi-structured Graph Neural Network model for real-time incident prediction in large traffic networks. Transportation Research Part C: Emerging Technologies 156 (2023).
  144. Lelitha Vanajakshi and Laurence R Rilett. 2004. A comparison of the performance of artificial neural networks and support vector machines for the prediction of traffic speed. In IV. 194–199.
  145. Attention is all you need. In NeurIPS.
  146. Graph attention networks. arXiv preprint arXiv:1710.10903 (2017).
  147. Matthew Veres and Medhat Moussa. 2019. Deep learning for intelligent transportation systems: A survey of emerging trends. TITS 21, 8 (2019).
  148. Autonomous vehicle control systems—a review of decision making. Proceedings of the Institution of Mechanical Engineers 225, 2 (2011).
  149. Short-term traffic forecasting: Overview of objectives and methods. Transport reviews 24, 5 (2004).
  150. Short-term traffic forecasting: Where we are and where we’re going. Transportation Research Part C: Emerging Technologies 43 (2014).
  151. GSNet: learning spatial-temporal correlations from geographical and semantic aspects for traffic accident risk forecasting. In AAAI.
  152. Graph-based deep modeling and real time forecasting of sparse spatio-temporal data. arXiv preprint arXiv:1804.00684 (2018).
  153. Local spectral graph convolution for point set feature learning. In ECCV.
  154. Routing and congestion in multi-modal transportation networks. International Journal of Modern Physics C 34, 03 (2023).
  155. Dynamic travel time prediction with spatiotemporal features: using a GNN-based deep learning method. Annals of Operations Research (2023).
  156. Meta-learning based spatial-temporal graph attention network for traffic signal control. Knowledge-based Systems 250 (2022).
  157. Contrastive GNN-based Traffic Anomaly Analysis Against Imbalanced Dataset in IoT-based ITS. In GLOBECOM.
  158. Yue Wang and Justin M Solomon. 2021. Object dgcnn: 3d object detection using dynamic graphs. In NeurIPS.
  159. Dynamic graph cnn for learning on point clouds. TOG 38, 5 (2019).
  160. STMARL: A spatio-temporal multi-agent reinforcement learning approach for cooperative traffic light control. TMC 21, 6 (2020).
  161. Yinhai Wang and Ziqiang Zeng. 2018. Data-driven solutions to transportation problems.
  162. Spatio-temporal-categorical graph neural networks for fine-grained multi-incident co-prediction. In CIKM.
  163. Chien-Hung Wei and Ying Lee. 2007. Development of freeway travel time forecasting models by integrating different sources of traffic data. IEEE Transactions on Vehicular Technology 56, 6 (2007).
  164. Colight: Learning network-level cooperation for traffic signal control. In CIKM.
  165. Traffic demand prediction based on spatial-temporal guided multi graph Sandwich-Transformer. Information Sciences 643 (2023).
  166. Deltaconv: anisotropic operators for geometric deep learning on point clouds. TOG 41, 4 (2022).
  167. Billy M Williams. 2001. Multivariate vehicular traffic flow prediction: evaluation of ARIMAX modeling. TRR 1776, 1 (2001).
  168. Billy M Williams and Lester A Hoel. 2003. Modeling and forecasting vehicular traffic flow as a seasonal ARIMA process: Theoretical basis and empirical results. Journal of Transportation Engineering 129, 6 (2003).
  169. Intelligent transportation systems: a global perspective. Mathematical and computer modelling 22, 4-7 (1995).
  170. Travel-time prediction with support vector regression. T-ITS 5, 4 (2004), 276–281.
  171. DynSTGAT: Dynamic spatial-temporal graph attention network for traffic signal control. In CIKM.
  172. A combined deep learning method with attention-based LSTM model for short-term traffic speed forecasting. JAT 2020 (2020).
  173. A comprehensive survey on graph neural networks. TNNLS 32, 1 (2020).
  174. Graph wavenet for deep spatial-temporal graph modeling. arXiv preprint arXiv:1906.00121 (2019).
  175. Walk in the cloud: Learning curves for point clouds shape analysis. In ICCV.
  176. How powerful are graph neural networks?. In ICLR.
  177. Spatial-temporal transformer networks for traffic flow forecasting. arXiv preprint arXiv:2001.02908 (2020).
  178. Hypergcn: A new method for training graph convolutional networks on hypergraphs. In NeurIPS.
  179. Shantian Yang. 2023. Hierarchical graph multi-agent reinforcement learning for traffic signal control. Information Sciences 634 (2023).
  180. A deep learning approach to real-time parking occupancy prediction in transportation networks incorporating multiple spatio-temporal data sources. Transportation Research Part C: Emerging Technologies 107 (2019).
  181. IHG-MA: Inductive heterogeneous graph multi-agent reinforcement learning for multi-intersection traffic signal control. Neural Networks 139 (2021).
  182. Short-Term Forecasting of Dockless Bike-Sharing Demand with the Built Environment and Weather. JAT (2023).
  183. How to build a graph-based deep learning architecture in traffic domain: A survey. TITS 23, 5 (2020).
  184. Jaehyuk Yi and Jinkyoo Park. 2020. Hypergraph convolutional recurrent neural network. In KDD.
  185. Multimodal virtual point 3d detection. In NeurIPS.
  186. Deep learning on traffic prediction: Methods, analysis, and future directions. TITS 23, 6 (2021).
  187. Transferable traffic signal control: Reinforcement learning with graph centric state representation. Transportation Research Part C: Emerging Technologies 130 (2021).
  188. Spatio-Temporal Graph Convolutional Networks: A Deep Learning Framework for Traffic Forecasting. In IJCAI.
  189. Deep spatio-temporal graph convolutional network for traffic accident prediction. Neurocomputing 423 (2021).
  190. A Review of Recurrent Neural Networks: LSTM Cells and Network Architectures. Neural Computation 31 (2019).
  191. MaCAR: Urban traffic light control via active multi-agent communication and action rectification. In IJCAI.
  192. Hetero-convlstm: A deep learning approach to traffic accident prediction on heterogeneous spatio-temporal data. In KDD.
  193. Zheng Zeng. 2021. GraphLight: graph-based reinforcement learning for traffic signal control. In ICCCS.
  194. Shi Zhancheng. 2021. Research on application of deep reinforcement learning in traffic signal control. In ICFSP.
  195. FASTGNN: A topological information protected federated learning approach for traffic speed forecasting. IEEE Transactions on Industrial Informatics 17, 12 (2021).
  196. FPTN: Fast Pure Transformer Network for Traffic Flow Forecasting. In ICANN.
  197. Edge learning: The enabling technology for distributed big data analytics in the edge. CSUR 54, 7 (2021).
  198. Data-driven intelligent transportation systems: A survey. TITS 12, 4 (2011).
  199. Linked dynamic graph cnn: Learning through point cloud by linking hierarchical features. In M2VIP.
  200. A multitask learning model for traffic flow and speed forecasting. IEEE Access 8 (2020).
  201. Semi-supervised hierarchical recurrent graph neural network for city-wide parking availability prediction. In AAAI.
  202. Semi-supervised city-wide parking availability prediction via hierarchical recurrent graph neural network. TKDE 34, 8 (2020), 3984–3996.
  203. Yang Zhang and Tao Cheng. 2020. Graph deep learning model for network-based predictive hotspot mapping of sparse spatio-temporal events. Computers, Environment and Urban Systems 79 (2020).
  204. A multi-modal graph neural network approach to traffic risk forecasting in smart urban sensing. In SECON.
  205. Graph-adaptive rectified linear unit for graph neural networks. In TheWebConf.
  206. Deep learning on graphs: A survey. TKDE 34, 1 (2020).
  207. Chenguang Zhao and Gang Wang. 2022. Dynamic Traffic Light Control with Reinforcement Learning Based on Gnn Prediction. Available at SSRN 4040526 (2022).
  208. MePark: Using meters as sensors for citywide on-street parking availability prediction. TITS 23, 7 (2021).
  209. Point transformer. In ICCV.
  210. T-GCN: A Temporal Graph Convolutional Network for Traffic Prediction. TITS (2019).
  211. Developing a multiview spatiotemporal model based on deep graph neural networks to predict the travel demand by bus. IJGIS (2023).
  212. Target-driven structured transformer planner for vision-language navigation. In Proceedings of the 30th ACM International Conference on Multimedia.
  213. Dynamic Hypergraph Structure Learning for Traffic Flow Forecasting. In ICDE.
  214. GMAN: A graph multi-attention network for traffic prediction. In AAAI.
  215. Probabilistic graph neural networks for traffic signal control. In ICASSP.
  216. Ast-gnn: An attention-based spatio-temporal graph neural network for interaction-aware pedestrian trajectory prediction. Neurocomputing 445 (2021).
  217. Graph neural networks: A review of methods and applications. AI Open 1 (2020).
  218. GTNet: Graph Transformer Network for 3D Point Cloud Classification and Semantic Segmentation. arXiv preprint arXiv:2305.15213 (2023).
  219. RiskOracle: A minute-level citywide traffic accident forecasting framework. In AAAI.
  220. Foresee urban sparse traffic accidents: A spatiotemporal multi-granularity perspective. TKDE 34, 8 (2020).
  221. Di Zhu and Yu Liu. 2018. Modelling spatial patterns using graph convolutional networks. In GIScience.
  222. Ta-stan: A deep spatial-temporal attention learning framework for regional traffic accident risk prediction. In IJCNN.
  223. Tri-HGNN: Learning Triple Policies Fused Hierarchical Graph Neural Networks for Pedestrian Trajectory Prediction. PR (2023).
  224. TAGCN: Station-level demand prediction for bike-sharing system via a temporal attention graph convolution network. Information Sciences 561 (2021).
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