Model selection in reconciling hierarchical time series

被引:0
|
作者
Mahdi Abolghasemi
Rob J. Hyndman
Evangelos Spiliotis
Christoph Bergmeir
机构
[1] Monash University,Department of Data science & AI
[2] Monash University,Department of Econometrics and Business Statistics
[3] National Technical University of Athens,Forecasting and Strategy Unit, School of Electrical and Computer Engineering
来源
Machine Learning | 2022年 / 111卷
关键词
Hierarchical forecasting; Machine learning; Time series features; Classification;
D O I
暂无
中图分类号
学科分类号
摘要
Model selection has been proven an effective strategy for improving accuracy in time series forecasting applications. However, when dealing with hierarchical time series, apart from selecting the most appropriate forecasting model, forecasters have also to select a suitable method for reconciling the base forecasts produced for each series to make sure they are coherent. Although some hierarchical forecasting methods like minimum trace are strongly supported both theoretically and empirically for reconciling the base forecasts, there are still circumstances under which they might not produce the most accurate results, being outperformed by other methods. In this paper we propose an approach for dynamically selecting the most appropriate hierarchical forecasting reconciliation method and leading to more accurate coherent forecasts. The approach, which we call conditional hierarchical forecasting, is based on machine learning classification methods that use time series features to select the reconciliation method for each hierarchy. Moreover, it allows the selection to be tailored according to the accuracy measure of preference and the hierarchical level(s) of interest. Our results suggest that conditional hierarchical forecasting can lead to significantly more accurate forecasts than standard approaches, especially at lower hierarchical levels.
引用
收藏
页码:739 / 789
页数:50
相关论文
共 50 条
  • [1] Model selection in reconciling hierarchical time series
    Abolghasemi, Mahdi
    Hyndman, Rob J.
    Spiliotis, Evangelos
    Bergmeir, Christoph
    [J]. MACHINE LEARNING, 2022, 111 (02) : 739 - 789
  • [2] Time series and model selection
    Clark, A. E.
    Troskie, C. G.
    [J]. COMMUNICATIONS IN STATISTICS-SIMULATION AND COMPUTATION, 2008, 37 (04) : 766 - 771
  • [3] Time series prediction with hierarchical recurrent model
    Keskin, Mustafa Mert
    Irim, Fatih
    Karaahmetoglu, Oguzhan
    Kaya, Ersin
    [J]. SIGNAL IMAGE AND VIDEO PROCESSING, 2023, 17 (05) : 2121 - 2127
  • [4] Time series prediction with hierarchical recurrent model
    Mustafa Mert Keskin
    Fatih Irım
    Oğuzhan Karaahmetoğlu
    Ersin Kaya
    [J]. Signal, Image and Video Processing, 2023, 17 : 2121 - 2127
  • [5] On consistency for time series model selection
    William Kengne
    [J]. Statistical Inference for Stochastic Processes, 2023, 26 : 437 - 458
  • [6] On consistency for time series model selection
    Kengne, William
    [J]. STATISTICAL INFERENCE FOR STOCHASTIC PROCESSES, 2023, 26 (02) : 437 - 458
  • [7] Model selection for nonlinear time series
    Manzan S.
    [J]. Empirical Economics, 2004, 29 (4) : 901 - 920
  • [8] HIERARCHICAL SPARSE MODELING FOR REPRESENTATIVE SELECTION IN CHOREOGRAPHIC TIME SERIES
    Rallis, Ioannis
    Doulamis, Nikolaos
    Voulodimos, Athanasios
    Doulamis, Anastasios
    [J]. 2018 25TH IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING (ICIP), 2018, : 1023 - 1027
  • [9] Refinements to model selection for nonlinear time series
    Nakamura, T
    Judd, K
    Mees, A
    [J]. INTERNATIONAL JOURNAL OF BIFURCATION AND CHAOS, 2003, 13 (05): : 1263 - 1274
  • [10] Model selection for time series of count data
    Alzahrani, Naif
    Neal, Peter
    Spencer, Simon E. F.
    McKinley, Trevelyan J.
    Touloupou, Panayiota
    [J]. COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2018, 122 : 33 - 44