Publication:
Recurrent Multiplicative Neuron Model Artificial Neural Network for Non-Linear Time Series Forecasting

dc.authorscopusid23093703600
dc.authorscopusid24282075600
dc.authorscopusid23092915500
dc.authorscopusid55927757900
dc.contributor.authorEgrioglu, E.
dc.contributor.authorYolcu, U.
dc.contributor.authorAladag, C.H.
dc.contributor.authorBas, E.
dc.date.accessioned2020-06-21T13:47:17Z
dc.date.available2020-06-21T13:47:17Z
dc.date.issued2015
dc.departmentOndokuz Mayıs Üniversitesien_US
dc.department-temp[Egrioglu] Erol, Department of Statistics, Ondokuz Mayis Üniversitesi, Samsun, Turkey; [Yolcu] Ufuk, Department of Statistics, Ankara Üniversitesi, Ankara, Turkey; [Aladag] Cagdas Hakan, Department of Statistics, Hacettepe Üniversitesi, Ankara, Turkey; [Bas] Eren, Department of Statistics, Giresun Üniversitesi, Giresun, Giresun, Turkeyen_US
dc.description.abstractArtificial neural networks (ANN) have been widely used in recent years to model non-linear time series since ANN approach is a responsive method and does not require some assumptions such as normality or linearity. An important problem with using ANN for time series forecasting is to determine the number of neurons in hidden layer. There have been some approaches in the literature to deal with the problem of determining the number of neurons in hidden layer. A new ANN model was suggested which is called multiplicative neuron model (MNM) in the literature. MNM has only one neuron in hidden layer. Therefore, the problem of determining the number of neurons in hidden layer is automatically solved when MNM is employed. Also, MNM can produce accurate forecasts for non-linear time series. ANN models utilized for non-linear time series have generally autoregressive structures since lagged variables of time series are generally inputs of these models. On the other hand, it is a well-known fact that better forecasts for real life time series can be obtained from models whose inputs are lagged variables of error. In this study, a new recurrent multiplicative neuron neural network model is firstly proposed. In the proposed method, lagged variables of error are included in the model. Also, the problem of determining the number of neurons in hidden layer is avoided when the proposed method is used. To train the proposed neural network model, particle swarm optimization algorithm was used. To evaluate the performance of the proposed model, it was applied to a real life time series. Then, results produced by the proposed method were compared to those obtained from other methods. It was observed that the proposed method has superior performance to existing methods. © 2014, Springer Science+Business Media New York.en_US
dc.identifier.doi10.1007/s11063-014-9342-0
dc.identifier.endpage258en_US
dc.identifier.issn1370-4621
dc.identifier.issue2en_US
dc.identifier.scopus2-s2.0-84924851364
dc.identifier.scopusqualityQ3
dc.identifier.startpage249en_US
dc.identifier.urihttps://doi.org/10.1007/s11063-014-9342-0
dc.identifier.volume41en_US
dc.identifier.wosWOS:000351176000010
dc.identifier.wosqualityQ3
dc.language.isoenen_US
dc.publisherKluwer Academic Publishersen_US
dc.relation.ispartofNeural Processing Lettersen_US
dc.relation.journalNeural Processing Lettersen_US
dc.relation.publicationcategoryMakale - Uluslararası Hakemli Dergi - Kurum Öğretim Elemanıen_US
dc.rightsinfo:eu-repo/semantics/closedAccessen_US
dc.subjectArtificial Neural Networksen_US
dc.subjectForecastingen_US
dc.subjectMultiplicative Neuron Modelen_US
dc.subjectNon-linear Time Seriesen_US
dc.subjectRecurrent Neural Networksen_US
dc.titleRecurrent Multiplicative Neuron Model Artificial Neural Network for Non-Linear Time Series Forecastingen_US
dc.typeArticleen_US
dspace.entity.typePublication

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