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Statistical, Machine Learning and Deep Learning forecasting methods: Comparisons and ways forward

Makridakis, Spyros; Spiliotis, Evangelos; Assimakopoulos, Vassilios; Semenoglou, Artemios-Anargyros; Mulder, Gary; Nikolopoulos, Konstantinos

Authors

Spyros Makridakis

Evangelos Spiliotis

Vassilios Assimakopoulos

Artemios-Anargyros Semenoglou

Gary Mulder



Abstract

The purpose of this paper is to test empirically the value currently added by Deep Learning (DL) approaches in time series forecasting by comparing the accuracy of some state-of-the- art DL methods with that of popular Machine Learning (ML) and statistical ones. The paper consists of three main parts. The first part summarizes the results of a past study that compared statistical with ML methods using a subset of the M3 data, extending how- ever its results to include DL models, developed using the GluonTS toolkit. The second part widens the study by considering all M3 series and comparing the results obtained with that of other studies that have used the same data for evaluating new forecasting methods. We find that combinations of DL models perform better than most standard models, both statistical and ML, especially for the case of monthly series and long-term forecasts. How- ever, these improvements come at the cost of significantly increased computational time. Finally, the third part describes the advantages and drawbacks of DL methods, discussing the implications of our findings to the practice of forecasting. We conclude the paper by discussing how the field of forecasting has evolved over time and proposing some directions for future research.

Citation

Makridakis, S., Spiliotis, E., Assimakopoulos, V., Semenoglou, A., Mulder, G., & Nikolopoulos, K. (2023). Statistical, Machine Learning and Deep Learning forecasting methods: Comparisons and ways forward. Journal of the Operational Research Society, 74(3), 840-859. https://doi.org/10.1080/01605682.2022.2118629

Journal Article Type Article
Acceptance Date Aug 17, 2022
Online Publication Date Sep 5, 2022
Publication Date 2023
Deposit Date Aug 26, 2022
Publicly Available Date Mar 28, 2024
Journal Journal of the Operational Research Society
Print ISSN 0160-5682
Electronic ISSN 1476-9360
Publisher Taylor and Francis Group
Peer Reviewed Peer Reviewed
Volume 74
Issue 3
Pages 840-859
DOI https://doi.org/10.1080/01605682.2022.2118629
Public URL https://durham-repository.worktribe.com/output/1193600

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