Journal of Computer Applications ›› 2026, Vol. 46 ›› Issue (5): 1507-1517.DOI: 10.11772/j.issn.1001-9081.2025050570
• Data science and technology • Previous Articles
Huijie GUO1, Tianfeng DOU1, Zhenlin ZHANG1, Kaiyuan QI2, Dong WU2, Zhijian QU1, Zhao LI1, Chongguang REN1(
)
Received:2025-05-27
Revised:2025-08-09
Accepted:2025-08-18
Online:2025-08-20
Published:2026-05-10
Contact:
Chongguang REN
About author:GUO Huijie, born in 2000, M. S. candidate. Her research interests include artificial intelligence and intelligent systems.Supported by:
郭慧洁1, 窦天凤1, 张振琳1, 亓开元2, 吴栋2, 曲志坚1, 李钊1, 任崇广1(
)
通讯作者:
任崇广
作者简介:郭慧洁(2000—),女,山东淄博人,硕士研究生,主要研究方向:人工智能与智能系统基金资助:CLC Number:
Huijie GUO, Tianfeng DOU, Zhenlin ZHANG, Kaiyuan QI, Dong WU, Zhijian QU, Zhao LI, Chongguang REN. Time-interdependency-aware dynamic Bayesian network for traffic prediction[J]. Journal of Computer Applications, 2026, 46(5): 1507-1517.
郭慧洁, 窦天凤, 张振琳, 亓开元, 吴栋, 曲志坚, 李钊, 任崇广. 基于时间依赖建模的动态贝叶斯网络交通预测[J]. 《计算机应用》唯一官方网站, 2026, 46(5): 1507-1517.
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URL: https://www.joca.cn/EN/10.11772/j.issn.1001-9081.2025050570
| 节点a | 节点b | DTW距离 | 是否相邻节点 | 相关性 |
|---|---|---|---|---|
| 27 | 177 | 124 984.04 | 否 | 1 |
| 27 | 36 | 23 850 096.66 | 否 | 0 |
Tab. 1 Temporal correlation analysis of traffic sensor nodes using DTW
| 节点a | 节点b | DTW距离 | 是否相邻节点 | 相关性 |
|---|---|---|---|---|
| 27 | 177 | 124 984.04 | 否 | 1 |
| 27 | 36 | 23 850 096.66 | 否 | 0 |
| 数据集 | 节点数 | 时间 步数 | 缺失率/% | 时间范围 |
|---|---|---|---|---|
| METR-LA | 207 | 34 272 | 8.110 | 03/01/2012—06/30/2012 |
| PeMS-BAY | 325 | 52 116 | 0.003 | 01/01/2017—05/31/2017 |
Tab. 2 Dataset details
| 数据集 | 节点数 | 时间 步数 | 缺失率/% | 时间范围 |
|---|---|---|---|---|
| METR-LA | 207 | 34 272 | 8.110 | 03/01/2012—06/30/2012 |
| PeMS-BAY | 325 | 52 116 | 0.003 | 01/01/2017—05/31/2017 |
| 数据集 | 模型 | 3个时间步 | 6个时间步 | 12个时间步 | ||||||
|---|---|---|---|---|---|---|---|---|---|---|
| MAE | RMSE | MAPE/% | MAE | RMSE | MAPE/% | MAE | RMSE | MAPE/% | ||
| METR-LA | ARIMA[ | 3.99 | 8.21 | 9.60 | 5.15 | 11.45 | 13.50 | 6.90 | 13.23 | 17.40 |
| STGCN[ | 2.88 | 5.74 | 7.62 | 3.47 | 7.24 | 9.57 | 4.59 | 9.40 | 12.70 | |
| DCRNN[ | 2.77 | 5.38 | 7.30 | 3.15 | 6.45 | 8.80 | 3.60 | 7.60 | 10.50 | |
| Graph-WaveNet[ | 2.69 | 5.15 | 6.90 | 3.07 | 6.22 | 8.37 | 3.53 | 7.37 | 10.01 | |
| ASTGCN[ | 4.86 | 9.27 | 9.21 | 5.43 | 10.61 | 10.13 | 6.51 | 12.52 | 11.64 | |
| AGCRN[ | 2.87 | 5.58 | 7.70 | 3.23 | 6.58 | 9.00 | 3.62 | 7.51 | 10.38 | |
| GMAN[ | 2.80 | 5.55 | 7.41 | 3.12 | 6.49 | 8.73 | 3.44 | 7.35 | 10.07 | |
| MTGNN[ | 2.69 | 5.18 | 6.86 | 3.05 | 6.17 | 8.19 | 3.49 | 7.23 | 9.87 | |
| DGCRN[ | 2.62 | 5.01 | 6.63 | 2.99 | 6.05 | 8.19 | 3.44 | 7.19 | 9.73 | |
| D2STGNN[ | 2.56 | 6.48 | 2.90 | 7.03 | ||||||
| MegaCRN[ | 4.94 | 2.93 | 6.06 | 7.96 | 3.38 | 7.23 | 9.72 | |||
| RGDAN[ | 2.69 | 5.20 | 7.14 | 2.96 | 5.98 | 8.07 | 3.36 | 9.54 | ||
| TRL-DAG[ | 2.73 | 5.32 | 7.27 | 3.16 | 6.41 | 8.68 | 3.55 | 7.37 | 10.28 | |
| TIDBN | 2.63 | 4.90 | 6.23 | 5.66 | 7.65 | 3.25 | 6.53 | 9.03 | ||
| PeMS-BAY | ARIMA[ | 1.62 | 3.30 | 3.50 | 2.33 | 4.76 | 5.40 | 3.38 | 6.50 | 8.30 |
| STGCN[ | 1.36 | 2.96 | 2.90 | 1.81 | 4.27 | 4.17 | 2.49 | 5.69 | 5.79 | |
| DCRNN[ | 1.38 | 2.95 | 2.90 | 1.74 | 3.97 | 3.90 | 2.07 | 4.74 | 4.90 | |
| Graph-WaveNet[ | 1.30 | 2.74 | 2.73 | 1.63 | 3.70 | 3.67 | 1.95 | 4.52 | 4.63 | |
| ASTGCN[ | 1.52 | 3.13 | 3.22 | 2.01 | 4.27 | 4.48 | 2.61 | 5.42 | 6.00 | |
| AGCRN[ | 1.37 | 2.87 | 2.94 | 1.69 | 3.85 | 3.87 | 1.96 | 4.54 | 4.64 | |
| GMAN[ | 1.34 | 2.91 | 2.86 | 1.63 | 3.76 | 3.68 | 1.86 | 4.32 | 4.37 | |
| MTGNN[ | 1.32 | 2.79 | 2.77 | 1.65 | 3.74 | 3.69 | 1.94 | 4.49 | 4.53 | |
| DGCRN[ | 1.28 | 2.69 | 2.66 | 1.59 | 3.63 | 3.55 | 1.89 | 4.42 | 4.43 | |
| D2STGNN[ | 3.49 | 1.85 | 4.30 | 4.37 | ||||||
| MegaCRN[ | 1.28 | 2.72 | 2.67 | 1.60 | 3.68 | 3.57 | 1.88 | 4.42 | 4.41 | |
| RGDAN[ | 1.31 | 2.79 | 2.77 | 1.56 | 3.55 | |||||
| TRL-DAG[ | 1.29 | 2.75 | 2.78 | 1.61 | 3.70 | 3.66 | 1.92 | 4.50 | 4.56 | |
| TIDBN | 1.18 | 2.44 | 2.40 | 1.44 | 3.16 | 3.14 | 1.74 | 3.96 | 4.08 | |
Tab. 3 Performance comparison of traffic speed prediction by different methods on METR-LA and PeMS-BAY datasets
| 数据集 | 模型 | 3个时间步 | 6个时间步 | 12个时间步 | ||||||
|---|---|---|---|---|---|---|---|---|---|---|
| MAE | RMSE | MAPE/% | MAE | RMSE | MAPE/% | MAE | RMSE | MAPE/% | ||
| METR-LA | ARIMA[ | 3.99 | 8.21 | 9.60 | 5.15 | 11.45 | 13.50 | 6.90 | 13.23 | 17.40 |
| STGCN[ | 2.88 | 5.74 | 7.62 | 3.47 | 7.24 | 9.57 | 4.59 | 9.40 | 12.70 | |
| DCRNN[ | 2.77 | 5.38 | 7.30 | 3.15 | 6.45 | 8.80 | 3.60 | 7.60 | 10.50 | |
| Graph-WaveNet[ | 2.69 | 5.15 | 6.90 | 3.07 | 6.22 | 8.37 | 3.53 | 7.37 | 10.01 | |
| ASTGCN[ | 4.86 | 9.27 | 9.21 | 5.43 | 10.61 | 10.13 | 6.51 | 12.52 | 11.64 | |
| AGCRN[ | 2.87 | 5.58 | 7.70 | 3.23 | 6.58 | 9.00 | 3.62 | 7.51 | 10.38 | |
| GMAN[ | 2.80 | 5.55 | 7.41 | 3.12 | 6.49 | 8.73 | 3.44 | 7.35 | 10.07 | |
| MTGNN[ | 2.69 | 5.18 | 6.86 | 3.05 | 6.17 | 8.19 | 3.49 | 7.23 | 9.87 | |
| DGCRN[ | 2.62 | 5.01 | 6.63 | 2.99 | 6.05 | 8.19 | 3.44 | 7.19 | 9.73 | |
| D2STGNN[ | 2.56 | 6.48 | 2.90 | 7.03 | ||||||
| MegaCRN[ | 4.94 | 2.93 | 6.06 | 7.96 | 3.38 | 7.23 | 9.72 | |||
| RGDAN[ | 2.69 | 5.20 | 7.14 | 2.96 | 5.98 | 8.07 | 3.36 | 9.54 | ||
| TRL-DAG[ | 2.73 | 5.32 | 7.27 | 3.16 | 6.41 | 8.68 | 3.55 | 7.37 | 10.28 | |
| TIDBN | 2.63 | 4.90 | 6.23 | 5.66 | 7.65 | 3.25 | 6.53 | 9.03 | ||
| PeMS-BAY | ARIMA[ | 1.62 | 3.30 | 3.50 | 2.33 | 4.76 | 5.40 | 3.38 | 6.50 | 8.30 |
| STGCN[ | 1.36 | 2.96 | 2.90 | 1.81 | 4.27 | 4.17 | 2.49 | 5.69 | 5.79 | |
| DCRNN[ | 1.38 | 2.95 | 2.90 | 1.74 | 3.97 | 3.90 | 2.07 | 4.74 | 4.90 | |
| Graph-WaveNet[ | 1.30 | 2.74 | 2.73 | 1.63 | 3.70 | 3.67 | 1.95 | 4.52 | 4.63 | |
| ASTGCN[ | 1.52 | 3.13 | 3.22 | 2.01 | 4.27 | 4.48 | 2.61 | 5.42 | 6.00 | |
| AGCRN[ | 1.37 | 2.87 | 2.94 | 1.69 | 3.85 | 3.87 | 1.96 | 4.54 | 4.64 | |
| GMAN[ | 1.34 | 2.91 | 2.86 | 1.63 | 3.76 | 3.68 | 1.86 | 4.32 | 4.37 | |
| MTGNN[ | 1.32 | 2.79 | 2.77 | 1.65 | 3.74 | 3.69 | 1.94 | 4.49 | 4.53 | |
| DGCRN[ | 1.28 | 2.69 | 2.66 | 1.59 | 3.63 | 3.55 | 1.89 | 4.42 | 4.43 | |
| D2STGNN[ | 3.49 | 1.85 | 4.30 | 4.37 | ||||||
| MegaCRN[ | 1.28 | 2.72 | 2.67 | 1.60 | 3.68 | 3.57 | 1.88 | 4.42 | 4.41 | |
| RGDAN[ | 1.31 | 2.79 | 2.77 | 1.56 | 3.55 | |||||
| TRL-DAG[ | 1.29 | 2.75 | 2.78 | 1.61 | 3.70 | 3.66 | 1.92 | 4.50 | 4.56 | |
| TIDBN | 1.18 | 2.44 | 2.40 | 1.44 | 3.16 | 3.14 | 1.74 | 3.96 | 4.08 | |
| 模型 | METR-LA | PeMS-BAY | ||
|---|---|---|---|---|
| MAE | RMSE | MAE | RMSE | |
| w/o sem | 3.35 | 6.64 | 1.82 | 4.12 |
| w/o con | 3.46 | 6.73 | 1.93 | 4.24 |
| w/o DBG-Dyn | 3.85 | 7.34 | 2.65 | 4.67 |
| w/o DBG-Stat | 3.64 | 7.13 | 2.54 | 4.53 |
| w/o GCN | 3.52 | 7.03 | 2.43 | 4.42 |
| TIDBN | 3.25 | 6.53 | 1.74 | 3.96 |
Tab. 4 Ablation experiment results
| 模型 | METR-LA | PeMS-BAY | ||
|---|---|---|---|---|
| MAE | RMSE | MAE | RMSE | |
| w/o sem | 3.35 | 6.64 | 1.82 | 4.12 |
| w/o con | 3.46 | 6.73 | 1.93 | 4.24 |
| w/o DBG-Dyn | 3.85 | 7.34 | 2.65 | 4.67 |
| w/o DBG-Stat | 3.64 | 7.13 | 2.54 | 4.53 |
| w/o GCN | 3.52 | 7.03 | 2.43 | 4.42 |
| TIDBN | 3.25 | 6.53 | 1.74 | 3.96 |
| [1] | LV Z, XU J, ZHENG K, et al. LC-RNN: a deep learning model for traffic speed prediction[C]// Proceedings of the 27th International Joint Conference on Artificial Intelligence. California: ijcai.org, 2018: 3470-3476. |
| [2] | 刘静,关伟.交通流预测方法综述[J].公路交通科技,2004,21(3):82-85. |
| LIU J, GUAN W. A summary of traffic flow forecasting methods[J]. Journal of Highway and Transportation Research and Development, 2004, 21(3): 82-85. | |
| [3] | CAI P, WANG Y, LU G, et al. A spatiotemporal correlative k‑nearest neighbor model for short-term traffic multistep forecasting[J]. Transportation Research Part C: Emerging Technologies, 2016, 62: 21-34. |
| [4] | GUO J, HUANG W, WILLIAMS B M. Adaptive Kalman filter approach for stochastic short-term traffic flow rate prediction and uncertainty quantification[J]. Transportation Research Part C: Emerging Technologies, 2014, 43(Pt 1): 50-64. |
| [5] | DRUCKER H, BURGES C J, KAUFMAN L, et al. Support vector regression machines[C]// Proceedings of the 10th International Conference on Neural Information Processing Systems. Cambridge: MIT Press, 1996: 155-161. |
| [6] | GU J, WANG Z, KUEN J, et al. Recent advances in convolutional neural networks[J]. Pattern Recognition, 2018, 77: 354-377. |
| [7] | YU Y, SI X, HU C, et al. A review of recurrent neural networks: LSTM cells and network architectures[J]. Neural Computation, 2019, 31(7): 1235-1270. |
| [8] | SHI X, CHEN Z, WANG H, et al. Convolutional LSTM network: a machine learning approach for precipitation nowcasting[C]// Proceedings of the 29th International Conference on Neural Information Processing Systems — Volume 1. Cambridge: MIT Press, 2015: 802-810. |
| [9] | WANG Y, LONG M, WANG J, et al. PredRNN: recurrent neural networks for predictive learning using spatiotemporal LSTMs[C]// Proceedings of the 31st International Conference on Neural Information Processing Systems. Red Hook: Curran Associates Inc., 2017: 879-888. |
| [10] | KASHYAP A A, RAVIRAJ S, DEVARAKONDA A, et al. Traffic flow prediction models — a review of deep learning techniques[J]. Cogent Engineering, 2022, 9(1): No.2010510. |
| [11] | ZHANG H, KAN S, CAO J, et al. A traffic flow-forecasting model based on multi-head spatio-temporal attention and adaptive graph convolutional networks[J]. International Journal of Modern Physics C, 2022, 33(10): No.2250137. |
| [12] | REZA S, FERREIRA M C, MACHADO J J M, et al. A multi-head attention-based Transformer model for traffic flow forecasting with a comparative analysis to recurrent neural networks[J]. Expert Systems with Applications, 2022, 202: No.117275. |
| [13] | CAO Y, LIU D, YIN Q, et al. MSASGCN: multi-head self-attention spatiotemporal graph convolutional network for traffic flow forecasting[J]. Journal of Advanced Transportation, 2022, 2022: No.2811961. |
| [14] | 曾筠程,邵敏华,孙立军,等.基于有向图卷积神经网络的交通预测与拥堵管控[J].中国公路学报,2021,34(12):239-248. |
| ZENG Y C, SHAO M H, SUN L J, et al. Traffic prediction and congestion control based on directed graph convolutional neural network[J]. China Journal of Highway and Transport, 2021, 34(12): 239-248. | |
| [15] | JIANG W, LUO J. Graph neural network for traffic forecasting: a survey[J]. Expert Systems with Applications, 2022, 207: No.117921. |
| [16] | MURPHY K P. Dynamic Bayesian networks[EB/OL]. [2025-04-10].. |
| [17] | 陈丹,胡明华,张洪海,等. 基于贝叶斯估计的短时空域扇区交通流量预测[J]. 西南交通大学学报, 2016, 51(4): 807-814. |
| CHEN D, HU M H, ZHANG H H, et al. Short-term traffic flow prediction of airspace sectors based on Bayesian estimation theory[J]. Journal of Southwest Jiaotong University, 2016, 51(4): 807-814. | |
| [18] | 史博,宋锋,李轶群,等. 基于交通流预测的高速公路收费站车道开闭配置[J]. 科学技术与工程, 2023, 23(30): 13157-13164. |
| SHI B, SONG F, LI Y Q, et al. Lane opening and closing configuration of expressway toll stations based on traffic flow prediction[J]. Science Technology and Engineering, 2023, 23(30): 13157-13164. | |
| [19] | WU Z, PAN S, LONG G, et al. Graph WaveNet for deep spatial-temporal graph modeling[C]// Proceedings of the 28th International Joint Conferences on Artificial Intelligence. California: ijcai.org, 2019: 1907-1913. |
| [20] | ZHANG J, WANG F Y, WANG K, et al. Data-driven intelligent transportation systems: a survey[J]. IEEE Transactions on Intelligent Transportation Systems, 2011, 12(4): 1624-1639. |
| [21] | 王竟成,张勇,胡永利,等.基于图卷积网络的交通预测综述[J]. 北京工业大学学报, 2021, 47(8): 954-970. |
| WANG J C, ZHANG Y, HU Y L, et al. Survey on graph convolutional neural network-based traffic prediction[J]. Journal of Beijing University of Technology, 2021, 47(8): 954-970. | |
| [22] | HOCHREITER S, SCHMIDHUBER J. Long short-term memory[J]. Neural Computation, 1997, 9(8): 1735-1780. |
| [23] | LI F, FENG J, YAN H, et al. Dynamic graph convolutional recurrent network for traffic prediction: benchmark and solution[J]. ACM Transactions on Knowledge Discovery from Data, 2023, 17(1): No.9. |
| [24] | XU C H, ZHANG A, XU C C, et al. Traffic speed prediction: spatiotemporal convolution network based on long-term, short-term and spatial features[J]. Applied Intelligence, 2022, 52(2): 2224-2242. |
| [25] | IBNE HOSSAIN N U, JARADAT R, HOSSEINI S, et al. A framework for modeling and assessing system resilience using a Bayesian network: a case study of an interdependent electrical infrastructure system[J]. International Journal of Critical Infrastructure Protection, 2019, 25: 62-83. |
| [26] | SUN S, ZHANG C, YU G. A Bayesian network approach to traffic flow forecasting[J]. IEEE Transactions on Intelligent Transportation Systems, 2006, 7(1): 124-132. |
| [27] | NGUYEN H, LIU W, CHEN F. Discovering congestion propagation patterns in spatio-temporal traffic data[J]. IEEE Transactions on Big Data, 2017, 3(2): 169-180. |
| [28] | FAN X, ZHANG J, SHEN Q. Prediction of road congestion diffusion based on dynamic Bayesian networks[J]. Journal of Physics: Conference Series, 2019, 1176(2): No.022046. |
| [29] | YIN X, WU G, WEI J, et al. Deep learning on traffic prediction: methods, analysis, and future directions[J]. IEEE Transactions on Intelligent Transportation Systems, 2022, 23(6): 4927-4943. |
| [30] | JIN G, LIANG Y, FANG Y, et al. Spatio-temporal graph neural networks for predictive learning in urban computing: a survey[J]. IEEE Transactions on Knowledge and Data Engineering, 2024, 36(10): 5388-5408. |
| [31] | LI H, ZHAO Y, MAO Z, et al. A survey on graph neural networks in intelligent transportation systems[EB/OL]. [2025-03-12].. |
| [32] | HAN Y, WANG S, REN Y, et al. Predicting station-level short-term passenger flow in a citywide metro network using spatiotemporal graph convolutional neural networks[J]. ISPRS International Journal of Geo-Information, 2019, 8(6): No.243. |
| [33] | YU B, YIN H, ZHU Z. Spatio-temporal graph convolutional networks: a deep learning framework for traffic forecasting[C]// Proceedings of the 27th International Joint Conference on Artificial Intelligence. California: ijcai.org, 2018: 3634-3640. |
| [34] | FANG Z, LONG Q, SONG G, et al. Spatial-temporal graph ODE networks for traffic flow forecasting[C]// Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery and Data Mining. New York: ACM, 2021: 364-373. |
| [35] | GUO K, HU Y, QIAN Z, et al. Dynamic graph convolution network for traffic forecasting based on latent network of Laplace matrix estimation[J]. IEEE Transactions on Intelligent Transportation Systems, 2022, 23(2): 1009-1018. |
| [36] | SONG C, LIN Y, GUO S, et al. Spatial-temporal synchronous graph convolutional networks: a new framework for spatial-temporal network data forecasting[C]// Proceedings of the 34th AAAI Conference on Artificial Intelligence. Palo Alto: AAAI Press, 2020: 914-921. |
| [37] | LIU Z, DING F, DAI Y, et al. Spatial-temporal graph convolution network model with traffic fundamental diagram information informed for network traffic flow prediction[J]. Expert Systems with Applications, 2024, 249(Pt A): No.123543. |
| [38] | CAO S, WU L, ZHANG R, et al. A spatiotemporal multiscale graph convolutional network for traffic flow prediction[J]. IEEE Transactions on Intelligent Transportation Systems, 2024, 25(8): 8705-8718. |
| [39] | BERNDT D J, CLIFFORD J. Using dynamic time warping to find patterns in time series[C]// Proceedings of the 3rd International Conference on Knowledge Discovery and Data Mining. Menlo Park, CA: AAAI Press, 1994: 359-370. |
| [40] | LI Y, YU R, SHAHABI C, et al. Diffusion convolutional recurrent neural network: data-driven traffic forecasting[EB/OL]. [2025-03-12].. |
| [41] | GUO S, LIN Y, FENG N, et al. Attention based spatial-temporal graph convolutional networks for traffic flow forecasting[C]// Proceedings of the 33rd AAAI Conference on Artificial Intelligence. Palo Alto: AAAI Press, 2019: 922-929. |
| [42] | BAI L, YAO L, LI C, et al. Adaptive graph convolutional recurrent network for traffic forecasting[C]// Proceedings of the 34th International Conference on Neural Information Processing Systems. Red Hook: Curran Associates Inc., 2020: 17804-17815. |
| [43] | ZHENG C, FAN X, WANG C, et al. GMAN: a graph multi-attention network for traffic prediction[C]// Proceedings of the 34th AAAI Conference on Artificial Intelligence. Palo Alto: AAAI Press, 2020: 1234-1241. |
| [44] | WU Z, PAN S, LONG G, et al. Connecting the dots: multivariate time series forecasting with graph neural networks[C]// Proceedings of the 26th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. New York: ACM, 2020: 753-763. |
| [45] | SHAO Z, ZHANG Z, WEI W, et al. Decoupled dynamic spatial-temporal graph neural network for traffic forecasting[J]. Proceedings of the VLDB Endowment, 2022, 15(11): 2733-2746. |
| [46] | JIANG R, WANG Z, YONG J, et al. Spatio-temporal meta-graph learning for traffic forecasting[C]// Proceedings of the 37th AAAI conference on artificial intelligence. Palo Alto: AAAI Press, 2023: 8078-8086. |
| [47] | FAN J, WENG W, TIAN H, et al. RGDAN: a random graph diffusion attention network for traffic prediction[J]. Neural Networks, 2024, 172: No.106093. |
| [48] | CHEN L L, CHEN L B, WANG H, et al. Temporal representation learning enhanced dynamic adversarial graph convolutional network for traffic flow prediction[J]. Scientific Reports, 2025, 15: No.8330. |
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