Article (Scientific journals)
Multiple-output modeling for multi-step-ahead time series forecasting
Ben taieb, Souhaib; Sorjamaa, Antti; Bontempi, Gianluca
2010In Neurocomputing, 73 (10-12), p. 1950 - 1957
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Keywords :
Lazy learning; Long-term time series prediction; Multiple-output models; NN3 prediction competition; Accurate prediction; Ahead-time; Common features; Conventional approach; Direct approach; Experimental section; Future Horizons; Long-term forecasting; Multi-step; Multiple input single outputs; Stochastic properties; Time series forecasting; Time series prediction; Computer Science Applications; Cognitive Neuroscience; Artificial Intelligence
Abstract :
[en] Accurate prediction of time series over long future horizons is the new frontier of forecasting. Conventional approaches to long-term time series forecasting rely either on iterated one-step-ahead predictors or direct predictors.In spite of their diversity, iterated and direct techniques for multi-step-ahead forecasting share a common feature, i.e. they model from data a multiple-input single-output mapping. In previous works, the authors presented an original multiple-output approach to multi-step-ahead prediction. The goal is to improve accuracy by preserving in the forecasted sequence the stochastic properties of the training series. This is not guaranteed for instance in direct approaches where predictions for different horizons are performed independently.This paper presents a review of single-output vs. multiple-output approaches for prediction and goes a step forward with respect to the previous authors contributions by (i) extending the multiple-output approach with a query-based criterion and (ii) presenting an assessment of single-output and multiple-output methods on the NN3 competition datasets.In particular, the experimental section shows that multiple-output approaches represent a competitive choice for tackling long-term forecasting tasks. © 2010 Elsevier B.V.
Disciplines :
Computer science
Author, co-author :
Ben taieb, Souhaib  ;  Université de Mons - UMONS > Faculté des Sciences > Service Big Data and Machine Learning
Sorjamaa, Antti;  Time Series Prediction and Chemoinformatics, Adaptive Informatics Research Centre, Helsinki University of Technology, Finland
Bontempi, Gianluca;  Machine Learning Group, Département d'Informatique, Faculté des Sciences, Université Libre de Bruxelles, Belgium
Language :
English
Title :
Multiple-output modeling for multi-step-ahead time series forecasting
Publication date :
June 2010
Journal title :
Neurocomputing
ISSN :
0925-2312
eISSN :
1872-8286
Publisher :
Elsevier BV
Volume :
73
Issue :
10-12
Pages :
1950 - 1957
Peer reviewed :
Peer Reviewed verified by ORBi
Research unit :
S861 - Big Data and Machine Learning
Research institute :
Infortech
Complexys
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