Traffic Prediction Based on Formal Concept-Enhanced Federated Graph Learning

被引:1
作者
Wu, Kai [1 ]
Hao, Fei [1 ]
Yao, Ruoxia [1 ]
Li, Jinhai [2 ]
Min, Geyong [3 ]
Kuznetsov, Sergei O. [4 ]
机构
[1] Shaanxi Normal Univ, Sch Comp Sci, Xian 710119, Peoples R China
[2] Kunming Univ Sci & Technol, Fac Sci, Kunming 650500, Peoples R China
[3] Univ Exeter, Dept Comp Sci, Exeter EX4 4PY, England
[4] Natl Res Univ, Higher Sch Econ, Sch Data Anal & Artificial Intelligence, Moscow 101000, Russia
基金
中国国家自然科学基金;
关键词
Formal concept analysis; federated graph learning; traffic prediction; FLOW; INTERESTINGNESS;
D O I
10.1109/TITS.2025.3531108
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Aiming to improve the efficiency of urban traffic management, previous studies have achieved considerable traffic prediction accuracy. For example, methods based on time series analysis perform well in short-term traffic prediction, and neural networks show strong capabilities in processing complex nonlinear relationships within traffic data. However, previous studies also have the following two limitations: 1) a large amount of complex traffic data will increase the complexity of the model during training and further reduce the accuracy of the training results; 2) the large-scale distribution of traffic data leads to incomplete model training and data security issues. To address these issues, we propose a Formal Concept-enhanced Federated Graph Convolutional Network (FC-FedGCN), which adopts formal concept analysis to fully mine graph data and improve the training accuracy of the GCNs model. Under federated learning, the GCNs model can be trained independently on different clients, and the local model is optimized by sharing model parameters. Coupled with the premise of protecting data privacy, the integrity of the data is guaranteed and the training accuracy of the GCNs model is improved. We compare our model with various baseline models based on the PEMS datasets, and the results demonstrate that FC-FedGCN has significant advantages in traffic prediction, outperforming the comparison methods in multiple indicators.
引用
收藏
页码:6936 / 6948
页数:13
相关论文
共 42 条
[1]  
[Anonymous], 2012, Formal concept analysis: mathematical foundations
[2]   PKET-GCN: Prior knowledge enhanced time-varying graph convolution network for traffic flow prediction [J].
Bao, Yinxin ;
Liu, Jiali ;
Shen, Qinqin ;
Cao, Yang ;
Ding, Weiping ;
Shi, Quan .
INFORMATION SCIENCES, 2023, 634 :359-381
[3]   Machine Learning-based traffic prediction models for Intelligent Transportation Systems [J].
Boukerche, Azzedine ;
Wang, Jiahao .
COMPUTER NETWORKS, 2020, 181
[4]   FedGL: Federated graph learning framework with global self-supervision [J].
Chen, Chuan ;
Xu, Ziyue ;
Hu, Weibo ;
Zheng, Zibin ;
Zhang, Jie .
INFORMATION SCIENCES, 2024, 657
[5]   FedGraph: Federated Graph Learning With Intelligent Sampling [J].
Chen, Fahao ;
Li, Peng ;
Miyazaki, Toshiaki ;
Wu, Celimuge .
IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS, 2022, 33 (08) :1775-1786
[6]  
Chen M, 2020, PR MACH LEARN RES, V119
[7]   Learning Concept Interestingness for Identifying Key Structures From Social Networks [J].
Gao, Jie ;
Hao, Fei ;
Pei, Zheng ;
Min, Geyong .
IEEE TRANSACTIONS ON NETWORK SCIENCE AND ENGINEERING, 2021, 8 (04) :3220-3232
[8]   Diversified top-k maximal clique detection in Social Internet of Things [J].
Hao, Fei ;
Pei, Zheng ;
Yang, Laurence T. .
FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE, 2020, 107 :408-417
[9]   k-Cliques mining in dynamic social networks based on triadic formal concept analysis [J].
Hao, Fei ;
Park, Doo-Soon ;
Min, Geyong ;
Jeong, Young-Sik ;
Park, Jong-Hyuk .
NEUROCOMPUTING, 2016, 209 :57-66
[10]   FedGCN: Federated Learning-Based Graph Convolutional Networks for Non-Euclidean Spatial Data [J].
Hu, Kai ;
Wu, Jiasheng ;
Li, Yaogen ;
Lu, Meixia ;
Weng, Liguo ;
Xia, Min .
MATHEMATICS, 2022, 10 (06)