CLGSDN: Contrastive-Learning-Based Graph Structure Denoising Network for Traffic Prediction

被引:0
作者
Peng, Peng [1 ]
Chen, Xuewen [1 ]
Zhang, Xudong [1 ]
Tang, Haina [1 ]
Shen, Hanji [2 ]
Li, Jun [2 ]
机构
[1] Univ Chinese Acad Sci, Sch Artificial Intelligence, Beijing 100049, Peoples R China
[2] Chinese Acad Sci, Comp Network Informat Ctr, Beijing 100190, Peoples R China
来源
IEEE INTERNET OF THINGS JOURNAL | 2025年 / 12卷 / 07期
基金
中国国家自然科学基金;
关键词
Probabilistic logic; Predictive models; Noise measurement; Contrastive learning; Optimization; Noise reduction; Adaptation models; Spatiotemporal phenomena; Noise; Kernel; Graph contrastive learning (GCL); graph generation; probability modeling; traffic prediction;
D O I
10.1109/JIOT.2024.3502517
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The graph neural network-based prediction models have demonstrated remarkable utility in traffic prediction, and their efficacy is highly determined by the quality of the provided graphs. Consequently, there is an increasing demand for employing graph structure learning (GSL) techniques to optimize or generate the graphs. However, existing GSL techniques for traffic prediction encounter various issues, including the absence of temporal dynamicity, noisy connections, and insufficient supervisory information. To address these limitations, this article proposes a novel two-stage graph generation framework called contrastive learning-based graph structure denoising network (CLGSDN). This framework formulates the graph generation task as a probabilistic observation-inference process: using the self-learning adjacency matrix and time delayed self-attention (TDSA) methods to generate a series of graph observations, then inferring the optimal graph based on observations. The self-learning adjacency matrix is responsible for learning all potential connections in the graph, while TDSA enables the graph to change with traffic flow. In addition, CLGSDN identifies and eliminates noisy connections by modeling negative samples of the graph (edges), and defines virtual labels to achieve spatiotemporal graph contrastive learning (ST-GCL) in traffic prediction. The experimental results show that CLGSDN significantly enhances current mainstream traffic prediction models by providing reliable and efficient graphs. As such, it has significant implications for a wide range of applications, including traffic management, logistics, and smart transportation systems.
引用
收藏
页码:8638 / 8652
页数:15
相关论文
共 56 条
  • [1] [Anonymous], 2017, ARXIV170701926
  • [2] Atwood J, 2016, ADV NEUR IN, V29
  • [3] Bai L, 2020, ADV NEUR IN, V33
  • [4] Chen Yixin, 2023, 2023 IEEE 3rd International Conference on Electronic Technology, Communication and Information (ICETCI), P398, DOI 10.1109/ICETCI57876.2023.10176584
  • [5] Chen Yu, 2020, Iterative Deep Graph, V33
  • [6] Cho K., 2014, EMNLP 2014 C EMP MET, DOI [10.3115/v1/D14-1179, DOI 10.3115/V1/D14-1179]
  • [7] European Soil Data Centre, 2019, P 9 INT C COMPUTER C, DOI [arXiv:2205.09616, DOI 10.18653/V1/2023, DOI 10.33965/IHCI2019201906L016]
  • [8] A Graph Convolutional Stacked Temporal Attention Neural Network for Traffic Flow Forecasting
    Feng, Yushan
    Han, Fengxia
    Zhao, Shengjie
    [J]. 2022 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2022,
  • [9] Franceschi L., 2019, PMLR, P1972
  • [10] EXPLORING STRUCTURE-ADAPTIVE GRAPH LEARNING FOR ROBUST SEMI-SUPERVISED CLASSIFICATION
    Gao, Xiang
    Hu, Wei
    Guo, Zongming
    [J]. 2020 IEEE INTERNATIONAL CONFERENCE ON MULTIMEDIA AND EXPO (ICME), 2020,