Evolving graph structure learning for multivariate time series forecasting

被引:0
作者
Ye, Junchen [1 ]
Liu, Qian [2 ]
Liu, Zihan [2 ]
Li, Weimiao [2 ]
Zhu, Tongyu [2 ]
Sun, Leilei [2 ]
Du, Bowen [1 ]
机构
[1] Beihang Univ, Sch Transportat Sci & Engn, Beijing, Peoples R China
[2] Beihang Univ, Sch Comp Sci & Engn, Beijing, Peoples R China
基金
中国国家自然科学基金;
关键词
Time series forecasting; Graph neural network; Deep learning; Traffic forecasting;
D O I
10.1016/j.knosys.2025.113190
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In recent years, the application of graph neural networks (GNN) in multivariate time series forecasting has yielded remarkable achievements. The adjacency matrix which describes the interactions among variables is dense and static in most previous efforts no matter hand-crafted or self-learned. However, we argue that: (1) In the real-world scenario, the interactions could be dynamic and evolving; (2) A sparse and compact graph structure could better reflect such interactions. Along this line, this paper proposes a deep neural network based on GNN to address multivariate time series forecasting problem. Firstly, we construct a sparse and principal structure from the original dense graph structure differentiably by Gumbel-Softmax. Secondly, a new series of graphs are constructed by the recurrent neural network to model the evolving correlations among variables during each individual time point. Thirdly, a novel temporal constraint which is aimed at enhancing the training process is proposed to help evolving graphs capture the temporal smoothness of time series. Lastly, a unified neural network is constructed that integrates all of the above modules to make the final prediction, effectively addressing both temporal dependency and pairwise correlations in a comprehensive manner. Experiments are performed on six datasets comprising various domains, evaluating the performance of our model in single-step and multi-step forecasting tasks. The results showcase the exceptional performance of our model compared to the existing approaches in the field.
引用
收藏
页数:14
相关论文
共 60 条
  • [1] Abu-El-Haifa S, 2019, PR MACH LEARN RES, V97
  • [2] Bai L, 2019, PROCEEDINGS OF THE TWENTY-EIGHTH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, P1981
  • [3] Bruna J, 2014, Arxiv, DOI [arXiv:1312.6203, DOI 10.48550/ARXIV.1312.6203]
  • [4] Cao D., 2021, arXiv, DOI DOI 10.48550/ARXIV.2103.07719
  • [5] Discrete Signal Processing on Graphs: Sampling Theory
    Chen, Siheng
    Varma, Rohan
    Sandryhaila, Aliaksei
    Kovacevic, Jelena
    [J]. IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2015, 63 (24) : 6510 - 6523
  • [6] Chen WQ, 2019, Arxiv, DOI arXiv:1911.12093
  • [7] Trimmed fuzzy clustering of financial time series based on dynamic time warping
    D'Urso, Pierpaolo
    De Giovanni, Livia
    Massari, Riccardo
    [J]. ANNALS OF OPERATIONS RESEARCH, 2021, 299 (1-2) : 1379 - 1395
  • [8] Defferrard M, 2016, ADV NEUR IN, V29
  • [9] ST-Norm: Spatial and Temporal Normalization for Multi-variate Time Series Forecasting
    Deng, Jinliang
    Chen, Xiusi
    Jiang, Renhe
    Song, Xuan
    Tsang, Ivor W.
    [J]. KDD '21: PROCEEDINGS OF THE 27TH ACM SIGKDD CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2021, : 269 - 278
  • [10] Drucker H, 1997, ADV NEUR IN, V9, P155