Time series forecasting by using a neural arima model based on wavelet decomposition

Detalhes bibliográficos
Autor(a) principal: Pereira, Eliete Nascimento
Data de Publicação: 2016
Outros Autores: Scarpin, Cassius Tadeu, Teixeira Júnior, Luíz Albino
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Independent Journal of Management & Production
Texto Completo: http://www.ijmp.jor.br/index.php/ijmp/article/view/400
Resumo: In the prediction of (stochastic) time series, it has been common to suppose that an individual predictive method – for instance, an Auto-Regressive Integrated Moving Average (ARIMA) model – produces residuals like a white noise process. However, mainly due to the structures of auto-dependence not mapped by a given individual predictive method, this assumption may easily be violated, in practice, as pointed out in Firmino et al. (2015). In order to correct it (and accordingly to produce more forecasts with more accuracy power), this paper puts forward a Wavelet Hybrid Forecaster (WHF) that integrates the following numerical techniques: wavelet decomposition; ARIMA models; Artificial Neural Networks (ANNs); and linear combination of forecasts. Basically, the proposed WHF can map simultaneously linear – by means of a linear combination of ARIMA forecasts – and non-linear – through a linear combination of ANN forecasts – auto-dependence structures exhibited by a given time series. Differently of other hybrid methodologies existing in literature, the WHF forecasts are produced carrying into account implicitly the information from the frequency presenting in the underlying time series by means of the Wavelet Components (WCs) obtained by the wavelet decomposition approach. All numerical results show that WHF method has achieved remarkable accuracy gains, when comparing with other competitive forecasting methods already published in specialized literature, in the prediction of a well-known annual time series of sunspot.
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spelling Time series forecasting by using a neural arima model based on wavelet decompositionWavelet decompositionARIMA modelArtificial neural networksLinear combination of forecastsIn the prediction of (stochastic) time series, it has been common to suppose that an individual predictive method – for instance, an Auto-Regressive Integrated Moving Average (ARIMA) model – produces residuals like a white noise process. However, mainly due to the structures of auto-dependence not mapped by a given individual predictive method, this assumption may easily be violated, in practice, as pointed out in Firmino et al. (2015). In order to correct it (and accordingly to produce more forecasts with more accuracy power), this paper puts forward a Wavelet Hybrid Forecaster (WHF) that integrates the following numerical techniques: wavelet decomposition; ARIMA models; Artificial Neural Networks (ANNs); and linear combination of forecasts. Basically, the proposed WHF can map simultaneously linear – by means of a linear combination of ARIMA forecasts – and non-linear – through a linear combination of ANN forecasts – auto-dependence structures exhibited by a given time series. Differently of other hybrid methodologies existing in literature, the WHF forecasts are produced carrying into account implicitly the information from the frequency presenting in the underlying time series by means of the Wavelet Components (WCs) obtained by the wavelet decomposition approach. All numerical results show that WHF method has achieved remarkable accuracy gains, when comparing with other competitive forecasting methods already published in specialized literature, in the prediction of a well-known annual time series of sunspot.Independent2016-03-01info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionapplication/pdftext/htmlhttp://www.ijmp.jor.br/index.php/ijmp/article/view/40010.14807/ijmp.v7i1.400Independent Journal of Management & Production; Vol. 7 No. 1 (2016): Independent Journal of Management & Production; 252-2702236-269X2236-269Xreponame:Independent Journal of Management & Productioninstname:Instituto Federal de Educação, Ciência e Tecnologia de São Paulo (IFSP)instacron:IJM&Penghttp://www.ijmp.jor.br/index.php/ijmp/article/view/400/287http://www.ijmp.jor.br/index.php/ijmp/article/view/400/505Copyright (c) 2016 Eliete Nascimento Pereira, Cassius Tadeu Scarpin, Luíz Albino Teixeira Júniorinfo:eu-repo/semantics/openAccessPereira, Eliete NascimentoScarpin, Cassius TadeuTeixeira Júnior, Luíz Albino2018-09-04T13:12:15Zoai:www.ijmp.jor.br:article/400Revistahttp://www.ijmp.jor.br/PUBhttp://www.ijmp.jor.br/index.php/ijmp/oaiijmp@ijmp.jor.br||paulo@paulorodrigues.pro.br||2236-269X2236-269Xopendoar:2018-09-04T13:12:15Independent Journal of Management & Production - Instituto Federal de Educação, Ciência e Tecnologia de São Paulo (IFSP)false
dc.title.none.fl_str_mv Time series forecasting by using a neural arima model based on wavelet decomposition
title Time series forecasting by using a neural arima model based on wavelet decomposition
spellingShingle Time series forecasting by using a neural arima model based on wavelet decomposition
Pereira, Eliete Nascimento
Wavelet decomposition
ARIMA model
Artificial neural networks
Linear combination of forecasts
title_short Time series forecasting by using a neural arima model based on wavelet decomposition
title_full Time series forecasting by using a neural arima model based on wavelet decomposition
title_fullStr Time series forecasting by using a neural arima model based on wavelet decomposition
title_full_unstemmed Time series forecasting by using a neural arima model based on wavelet decomposition
title_sort Time series forecasting by using a neural arima model based on wavelet decomposition
author Pereira, Eliete Nascimento
author_facet Pereira, Eliete Nascimento
Scarpin, Cassius Tadeu
Teixeira Júnior, Luíz Albino
author_role author
author2 Scarpin, Cassius Tadeu
Teixeira Júnior, Luíz Albino
author2_role author
author
dc.contributor.author.fl_str_mv Pereira, Eliete Nascimento
Scarpin, Cassius Tadeu
Teixeira Júnior, Luíz Albino
dc.subject.por.fl_str_mv Wavelet decomposition
ARIMA model
Artificial neural networks
Linear combination of forecasts
topic Wavelet decomposition
ARIMA model
Artificial neural networks
Linear combination of forecasts
description In the prediction of (stochastic) time series, it has been common to suppose that an individual predictive method – for instance, an Auto-Regressive Integrated Moving Average (ARIMA) model – produces residuals like a white noise process. However, mainly due to the structures of auto-dependence not mapped by a given individual predictive method, this assumption may easily be violated, in practice, as pointed out in Firmino et al. (2015). In order to correct it (and accordingly to produce more forecasts with more accuracy power), this paper puts forward a Wavelet Hybrid Forecaster (WHF) that integrates the following numerical techniques: wavelet decomposition; ARIMA models; Artificial Neural Networks (ANNs); and linear combination of forecasts. Basically, the proposed WHF can map simultaneously linear – by means of a linear combination of ARIMA forecasts – and non-linear – through a linear combination of ANN forecasts – auto-dependence structures exhibited by a given time series. Differently of other hybrid methodologies existing in literature, the WHF forecasts are produced carrying into account implicitly the information from the frequency presenting in the underlying time series by means of the Wavelet Components (WCs) obtained by the wavelet decomposition approach. All numerical results show that WHF method has achieved remarkable accuracy gains, when comparing with other competitive forecasting methods already published in specialized literature, in the prediction of a well-known annual time series of sunspot.
publishDate 2016
dc.date.none.fl_str_mv 2016-03-01
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
format article
status_str publishedVersion
dc.identifier.uri.fl_str_mv http://www.ijmp.jor.br/index.php/ijmp/article/view/400
10.14807/ijmp.v7i1.400
url http://www.ijmp.jor.br/index.php/ijmp/article/view/400
identifier_str_mv 10.14807/ijmp.v7i1.400
dc.language.iso.fl_str_mv eng
language eng
dc.relation.none.fl_str_mv http://www.ijmp.jor.br/index.php/ijmp/article/view/400/287
http://www.ijmp.jor.br/index.php/ijmp/article/view/400/505
dc.rights.driver.fl_str_mv Copyright (c) 2016 Eliete Nascimento Pereira, Cassius Tadeu Scarpin, Luíz Albino Teixeira Júnior
info:eu-repo/semantics/openAccess
rights_invalid_str_mv Copyright (c) 2016 Eliete Nascimento Pereira, Cassius Tadeu Scarpin, Luíz Albino Teixeira Júnior
eu_rights_str_mv openAccess
dc.format.none.fl_str_mv application/pdf
text/html
dc.publisher.none.fl_str_mv Independent
publisher.none.fl_str_mv Independent
dc.source.none.fl_str_mv Independent Journal of Management & Production; Vol. 7 No. 1 (2016): Independent Journal of Management & Production; 252-270
2236-269X
2236-269X
reponame:Independent Journal of Management & Production
instname:Instituto Federal de Educação, Ciência e Tecnologia de São Paulo (IFSP)
instacron:IJM&P
instname_str Instituto Federal de Educação, Ciência e Tecnologia de São Paulo (IFSP)
instacron_str IJM&P
institution IJM&P
reponame_str Independent Journal of Management & Production
collection Independent Journal of Management & Production
repository.name.fl_str_mv Independent Journal of Management & Production - Instituto Federal de Educação, Ciência e Tecnologia de São Paulo (IFSP)
repository.mail.fl_str_mv ijmp@ijmp.jor.br||paulo@paulorodrigues.pro.br||
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