Factor-Based Framework for Multivariate and Multi-step-ahead Forecasting of Large Scale Time Series

被引:4
作者
De Stefani, Jacopo [1 ]
Bontempi, Gianluca [1 ]
机构
[1] Univ Libre Bruxelles, Dept Comp Sci, Machine Learning Grp MLG ULB, Brussels, Belgium
来源
FRONTIERS IN BIG DATA | 2021年 / 4卷
关键词
multivariate forecasting; multi-step-ahead forecasting; large scale forecasting; dimensionality reduction; dynamic factor models; nonlinear forecasting; scalability; PREDICTION; RECURRENT; STRATEGIES; MODEL; STATE;
D O I
10.3389/fdata.2021.690267
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
State-of-the-art multivariate forecasting methods are restricted to low dimensional tasks, linear dependencies and short horizons. The technological advances (notably the Big data revolution) are instead shifting the focus to problems characterized by a large number of variables, non-linear dependencies and long forecasting horizons. In the last few years, the majority of the best performing techniques for multivariate forecasting have been based on deep-learning models. However, such models are characterized by high requirements in terms of data availability and computational resources and suffer from a lack of interpretability. To cope with the limitations of these methods, we propose an extension to the DFML framework, a hybrid forecasting technique inspired by the Dynamic Factor Model (DFM) approach, a successful forecasting methodology in econometrics. This extension improves the capabilities of the DFM approach, by implementing and assessing both linear and non-linear factor estimation techniques as well as model-driven and data-driven factor forecasting techniques. We assess several method integrations within the DFML, and we show that the proposed technique provides competitive results both in terms of forecasting accuracy and computational efficiency on multiple very large-scale (>10(2) variables and > 10(3) samples) real forecasting tasks.</p>
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页数:18
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