Transfer Learning With Spatial-Temporal Graph Convolutional Network for Traffic Prediction

被引:28
作者
Yao, Zhixiu [1 ]
Xia, Shichao [2 ]
Li, Yun [1 ]
Wu, Guangfu [2 ]
Zuo, Linli [1 ]
机构
[1] Chongqing Univ Posts & Telecommun, Sch Commun & Informat Engn, Chongqing 400065, Peoples R China
[2] Chongqing Univ Posts & Telecommun, Sch Software Engn, Chongqing 400065, Peoples R China
基金
中国国家自然科学基金;
关键词
Roads; Transfer learning; Convolutional neural networks; Feature extraction; Task analysis; Data models; Convolution; Intelligent transportation system; traffic prediction; graph convolutional network; transfer learning; adversarial domain adaptation; FLOW PREDICTION; DEEP;
D O I
10.1109/TITS.2023.3250424
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Accurate spatial-temporal traffic modeling and prediction play an important role in intelligent transportation systems (ITS). Recently, various deep learning methods such as graph convolutional networks (GCNs) and recurrent neural networks (RNNs) have been widely adopted in traffic prediction tasks to extract spatial-temporal dependencies based on a large volume of high-quality training data. However, there exist data scarcity problems in some transportation networks, and in these cases, the performance of traditional GCNs and RNNs based approaches will degrade sharply. To address this problem, this paper proposes an adversarial domain adaptation with spatial-temporal graph convolutional network (Ada-STGCN) model to predict traffic indicators for a data-scarce target road network by transferring the knowledge from a data-sufficient source road network. Specifically, Ada-STGCN first develops a spatial-temporal graph convolutional network that combines the GCN and gated recurrent unit (GRU) to extract spatial-temporal dependencies from source and target road networks. Then, the technique of adversarial domain adaptation is integrated with the spatial-temporal graph convolutional network to learn discriminative and domain-invariant features to facilitate knowledge transfer. Experimental results on the real-world traffic datasets in the traffic flow prediction task demonstrate that our model yields the best prediction performance compared to state-of-the-art baseline methods.
引用
收藏
页码:8592 / 8605
页数:14
相关论文
共 51 条
[31]  
Shen J, 2018, AAAI CONF ARTIF INTE, P4058
[32]  
Shi XJ, 2015, ADV NEUR IN, V28
[33]   Online Distributed Offloading and Computing Resource Management With Energy Harvesting for Heterogeneous MEC-Enabled IoT [J].
Xia, Shichao ;
Yao, Zhixiu ;
Li, Yun ;
Mao, Shiwen .
IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS, 2021, 20 (10) :6743-6757
[34]   Incorporating Dynamicity of Transportation Network With Multi-Weight Traffic Graph Convolutional Network for Traffic Forecasting [J].
Shin, Yuyol ;
Yoon, Yoonjin .
IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2022, 23 (03) :2082-2092
[35]  
Tang H, 2020, AAAI CONF ARTIF INTE, V34, P5940
[36]  
Tang Y., 2022, arXiv
[37]   A transfer approach with attention reptile method and long-term generation mechanism for few-shot traffic prediction [J].
Tian, Chujie ;
Zhu, Xinning ;
Hu, Zheng ;
Ma, Jian .
NEUROCOMPUTING, 2021, 452 :15-27
[38]   Neural Style Transfer for image within images and conditional GANs for destylization [J].
Ubhi, Jagpal Singh ;
Aggarwal, Ashwani Kumar ;
Mallika, Ashwani Kumar .
JOURNAL OF VISUAL COMMUNICATION AND IMAGE REPRESENTATION, 2022, 85
[39]  
Wang JY, 2016, IEEE DATA MINING, P499, DOI [10.1109/ICDM.2016.51, 10.1109/ICDM.2016.0061]
[40]  
Wang LY, 2019, PROCEEDINGS OF THE TWENTY-EIGHTH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, P1893