A review and comparison of strategies for multi-step ahead time series forecasting based on the NN5 forecasting competition |
| |
Authors: | Souhaib Ben Taieb Gianluca BontempiAmir F. Atiya Antti Sorjamaa |
| |
Affiliation: | a Machine Learning Group, Département d’Informatique, Faculté des Sciences, Université Libre de Bruxelles, Belgium b Environmental and Industrial Machine Learning Group, Adaptive Informatics Research Centre, Altoo University School of Science, Finland c Faculty of Engineering, Cairo University, Giza, Egypt |
| |
Abstract: | Multi-step ahead forecasting is still an open challenge in time series forecasting. Several approaches that deal with this complex problem have been proposed in the literature but an extensive comparison on a large number of tasks is still missing. This paper aims to fill this gap by reviewing existing strategies for multi-step ahead forecasting and comparing them in theoretical and practical terms. To attain such an objective, we performed a large scale comparison of these different strategies using a large experimental benchmark (namely the 111 series from the NN5 forecasting competition). In addition, we considered the effects of deseasonalization, input variable selection, and forecast combination on these strategies and on multi-step ahead forecasting at large. The following three findings appear to be consistently supported by the experimental results: Multiple-Output strategies are the best performing approaches, deseasonalization leads to uniformly improved forecast accuracy, and input selection is more effective when performed in conjunction with deseasonalization. |
| |
Keywords: | Time series forecasting Multi-step ahead forecasting Long-term forecasting Strategies of forecasting Machine learning Lazy Learning NN5 forecasting competition Friedman test |
本文献已被 ScienceDirect 等数据库收录! |
|