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A new linear & nonlinear artificial neural network model for time series forecasting

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A new linear & nonlinear artificial neural network model for time series forecasting. / Yolcu, Ufuk; Egrioglu, Erol; Aladag, Cagdas H.
In: Decision Support Systems, Vol. 54, No. 3, 01.01.2013, p. 1340-1347.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

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Yolcu U, Egrioglu E, Aladag CH. A new linear & nonlinear artificial neural network model for time series forecasting. Decision Support Systems. 2013 Jan 1;54(3):1340-1347. doi: 10.1016/j.dss.2012.12.006

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Yolcu, Ufuk ; Egrioglu, Erol ; Aladag, Cagdas H. / A new linear & nonlinear artificial neural network model for time series forecasting. In: Decision Support Systems. 2013 ; Vol. 54, No. 3. pp. 1340-1347.

Bibtex

@article{71cafaca32624211baee74d2771a2263,
title = "A new linear & nonlinear artificial neural network model for time series forecasting",
abstract = "Artificial neural network approach is a well-known method that is a useful tool for time series forecasting. Since real life time series can generally contain both linear and nonlinear components, hybrid approaches which can model both these two components have also been proposed in the literature. The hybrid approaches suggested in the literature generally have two phases. In the first phase, linear component of time series is modeled with a linear model. Then, nonlinear component is modeled by utilizing a nonlinear model in the second phase. In two-phase methods, it is assumed that time series has only a linear structure in the first phase. Also, it is assumed that time series has only a nonlinear structure in the second phase. Therefore, this causes model specification error. In order to overcome this problem, a novel neural network model, which consists of both linear and nonlinear structures, is proposed in this study. The proposed model considers that time series has both linear and nonlinear components. Multiplicative and Mc Culloch-Pitts neuron structures are employed for nonlinear and linear parts of the proposed model, respectively. In addition, the modified particle swarm optimization method is used to train the proposed neural network model. In order to show the performance of the proposed approach, it is applied to three real life time series and obtained results are compared to those obtained from other approaches available in the literature. It is observed that the proposed model gives the best forecasts for these three time series.",
keywords = "Artificial neural networks, Forecasting, Multiplicative neuron model, Particle swarm optimization",
author = "Ufuk Yolcu and Erol Egrioglu and Aladag, {Cagdas H.}",
year = "2013",
month = jan,
day = "1",
doi = "10.1016/j.dss.2012.12.006",
language = "English",
volume = "54",
pages = "1340--1347",
journal = "Decision Support Systems",
issn = "0167-9236",
publisher = "Elsevier",
number = "3",

}

RIS

TY - JOUR

T1 - A new linear & nonlinear artificial neural network model for time series forecasting

AU - Yolcu, Ufuk

AU - Egrioglu, Erol

AU - Aladag, Cagdas H.

PY - 2013/1/1

Y1 - 2013/1/1

N2 - Artificial neural network approach is a well-known method that is a useful tool for time series forecasting. Since real life time series can generally contain both linear and nonlinear components, hybrid approaches which can model both these two components have also been proposed in the literature. The hybrid approaches suggested in the literature generally have two phases. In the first phase, linear component of time series is modeled with a linear model. Then, nonlinear component is modeled by utilizing a nonlinear model in the second phase. In two-phase methods, it is assumed that time series has only a linear structure in the first phase. Also, it is assumed that time series has only a nonlinear structure in the second phase. Therefore, this causes model specification error. In order to overcome this problem, a novel neural network model, which consists of both linear and nonlinear structures, is proposed in this study. The proposed model considers that time series has both linear and nonlinear components. Multiplicative and Mc Culloch-Pitts neuron structures are employed for nonlinear and linear parts of the proposed model, respectively. In addition, the modified particle swarm optimization method is used to train the proposed neural network model. In order to show the performance of the proposed approach, it is applied to three real life time series and obtained results are compared to those obtained from other approaches available in the literature. It is observed that the proposed model gives the best forecasts for these three time series.

AB - Artificial neural network approach is a well-known method that is a useful tool for time series forecasting. Since real life time series can generally contain both linear and nonlinear components, hybrid approaches which can model both these two components have also been proposed in the literature. The hybrid approaches suggested in the literature generally have two phases. In the first phase, linear component of time series is modeled with a linear model. Then, nonlinear component is modeled by utilizing a nonlinear model in the second phase. In two-phase methods, it is assumed that time series has only a linear structure in the first phase. Also, it is assumed that time series has only a nonlinear structure in the second phase. Therefore, this causes model specification error. In order to overcome this problem, a novel neural network model, which consists of both linear and nonlinear structures, is proposed in this study. The proposed model considers that time series has both linear and nonlinear components. Multiplicative and Mc Culloch-Pitts neuron structures are employed for nonlinear and linear parts of the proposed model, respectively. In addition, the modified particle swarm optimization method is used to train the proposed neural network model. In order to show the performance of the proposed approach, it is applied to three real life time series and obtained results are compared to those obtained from other approaches available in the literature. It is observed that the proposed model gives the best forecasts for these three time series.

KW - Artificial neural networks

KW - Forecasting

KW - Multiplicative neuron model

KW - Particle swarm optimization

U2 - 10.1016/j.dss.2012.12.006

DO - 10.1016/j.dss.2012.12.006

M3 - Journal article

AN - SCOPUS:84875409889

VL - 54

SP - 1340

EP - 1347

JO - Decision Support Systems

JF - Decision Support Systems

SN - 0167-9236

IS - 3

ER -