Improving time series forecasting: An approach combining bootstrap aggregation, clusters and exponential smoothing

被引:36
作者
Dantas, Tiago Mendes [1 ]
Cyrino Oliveira, Fernando Luiz [1 ]
机构
[1] Pontifical Catholic Univ Rio de Janeiro, Dept Ind Engn, Rio De Janeiro, Brazil
关键词
Bagging methods; Clustering time series; Exponential smoothing; Partitioning around medoids; Variance reduction; TESTS;
D O I
10.1016/j.ijforecast.2018.05.006
中图分类号
F [经济];
学科分类号
02 ;
摘要
Some recent papers have demonstrated that combining bagging (bootstrap aggregating) with exponential smoothing methods can produce highly accurate forecasts and improve the forecast accuracy relative to traditional methods. We therefore propose a new approach that combines the bagging, exponential smoothing and clustering methods. The existing methods use bagging to generate and aggregate groups of forecasts in order to reduce the variance. However, none of them consider the effect of covariance among the group of forecasts, even though it could have a dramatic impact on the variance of the group, and therefore on the forecast accuracy. The proposed approach, referred to here as Bagged.Cluster.ETS, aims to reduce the covariance effect by using partitioning around medoids (PAM) to produce clusters of similar forecasts, then selecting several forecasts from each cluster to create a group with a reduced variance. This approach was tested on various different time series sets from the M3 and CIF 2016 competitions. The empirical results have shown a substantial reduction in the forecast error, considering sMAPE and MASE. (C) 2018 International Institute of Forecasters. Published by Elsevier B.V. All rights reserved.
引用
收藏
页码:748 / 761
页数:14
相关论文
共 30 条
  • [21] Employing stacked ensemble approach for time series forecasting
    Sharma N.
    Mangla M.
    Mohanty S.N.
    Pattanaik C.R.
    [J]. International Journal of Information Technology, 2021, 13 (5) : 2075 - 2080
  • [22] Financial Forecasting With α-RNNs: A Time Series Modeling Approach
    Dixon, Matthew
    London, Justin
    [J]. FRONTIERS IN APPLIED MATHEMATICS AND STATISTICS, 2021, 6
  • [23] Improving forecasting by estimating time series structural components across multiple frequencies
    Kourentzes, Nikolaos
    Petropoulos, Fotios
    Trapero, Juan R.
    [J]. INTERNATIONAL JOURNAL OF FORECASTING, 2014, 30 (02) : 291 - 302
  • [24] Forecasting seasonal time series data: a Bayesian model averaging approach
    Vosseler, Alexander
    Weber, Enzo
    [J]. COMPUTATIONAL STATISTICS, 2018, 33 (04) : 1733 - 1765
  • [25] Exploring the association between time series features and forecasting by temporal aggregation using machine learning
    Rostami-Tabar, Bahman
    Mircetic, Dejan
    [J]. NEUROCOMPUTING, 2023, 548
  • [26] The vector innovations structural time series framework: a simple approach to multivariate forecasting
    de Silva, Ashton
    Hyndman, Rob J.
    Snyder, Ralph
    [J]. STATISTICAL MODELLING, 2010, 10 (04) : 353 - 374
  • [27] Forecasting implied volatility in foreign exchange markets: a functional time series approach
    Kearney, Fearghal
    Cummins, Mark
    Murphy, Finbarr
    [J]. EUROPEAN JOURNAL OF FINANCE, 2018, 24 (01) : 1 - 18
  • [28] A Study on Time Series Approach Applications for Optimized Forecasting of Mega Sporting Events
    Manoli, Napitiporn
    Takahashi, Masakazu
    Matsuura, Yoshiyuki
    [J]. KNOWLEDGE MANAGEMENT IN ORGANISATIONS, KMO 2024, 2024, 2152 : 112 - 121
  • [29] Conditional Temporal Aggregation for Time Series Forecasting Using Feature-Based Meta-Learning
    Kaltsounis, Anastasios
    Spiliotis, Evangelos
    Assimakopoulos, Vassilios
    [J]. ALGORITHMS, 2023, 16 (04)
  • [30] Time series prediction for the epidemic trends of monkeypox using the ARIMA, exponential smoothing, GM (1,1) and LSTM deep learning methods
    Wei, Wudi
    Wang, Gang
    Tao, Xing
    Luo, Qiang
    Chen, Lixiang
    Bao, Xiuli
    Liu, Yuxuan
    Jiang, Junjun
    Liang, Hao
    Ye, Li
    [J]. JOURNAL OF GENERAL VIROLOGY, 2023, 104 (04)