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An Evaluation of Neural Network Ensembles and Model Selection for Time Series Prediction

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An Evaluation of Neural Network Ensembles and Model Selection for Time Series Prediction. / Barrow, Devon K.; Crone, Sven F.; Kourentzes, Nikolaos.
The 2010 International Joint Conference on Neural Networks (IJCNN). New York: IEEE, 2010. p. 1-8.

Research output: Contribution in Book/Report/Proceedings - With ISBN/ISSNConference contribution/Paperpeer-review

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Barrow DK, Crone SF, Kourentzes N. An Evaluation of Neural Network Ensembles and Model Selection for Time Series Prediction. In The 2010 International Joint Conference on Neural Networks (IJCNN). New York: IEEE. 2010. p. 1-8 doi: 10.1109/IJCNN.2010.5596686

Author

Barrow, Devon K. ; Crone, Sven F. ; Kourentzes, Nikolaos. / An Evaluation of Neural Network Ensembles and Model Selection for Time Series Prediction. The 2010 International Joint Conference on Neural Networks (IJCNN). New York : IEEE, 2010. pp. 1-8

Bibtex

@inproceedings{0fcfd6c11bbb40c08c419bc503322f93,
title = "An Evaluation of Neural Network Ensembles and Model Selection for Time Series Prediction",
abstract = "Ensemble methods represent an approach to combine a set of models, each capable of solving a given task, but which together produce a composite global model whose accuracy and robustness exceeds that of the individual models. Ensembles of neural networks have traditionally been applied to machine learning and pattern recognition but more recently have been applied to forecasting of time series data. Several methods have been developed to produce neural network ensembles ranging from taking a simple average of individual model outputs to more complex methods such as bagging and boosting. Which ensemble method is best; what factors affect ensemble performance, under what data conditions are ensembles most useful and when is it beneficial to use ensembles over model selection are a few questions which remain unanswered. In this paper we present some initial findings using neural network ensembles based on the mean and median applied to forecast synthetic time series data. We vary factors such as the number of models included in the ensemble and how the models are selected, whether randomly or based on performance. We compare the performance of different ensembles to model selection and present the results.",
author = "Barrow, {Devon K.} and Crone, {Sven F.} and Nikolaos Kourentzes",
year = "2010",
doi = "10.1109/IJCNN.2010.5596686",
language = "English",
isbn = "978-1-4244-6917-8",
pages = "1--8",
booktitle = "The 2010 International Joint Conference on Neural Networks (IJCNN)",
publisher = "IEEE",

}

RIS

TY - GEN

T1 - An Evaluation of Neural Network Ensembles and Model Selection for Time Series Prediction

AU - Barrow, Devon K.

AU - Crone, Sven F.

AU - Kourentzes, Nikolaos

PY - 2010

Y1 - 2010

N2 - Ensemble methods represent an approach to combine a set of models, each capable of solving a given task, but which together produce a composite global model whose accuracy and robustness exceeds that of the individual models. Ensembles of neural networks have traditionally been applied to machine learning and pattern recognition but more recently have been applied to forecasting of time series data. Several methods have been developed to produce neural network ensembles ranging from taking a simple average of individual model outputs to more complex methods such as bagging and boosting. Which ensemble method is best; what factors affect ensemble performance, under what data conditions are ensembles most useful and when is it beneficial to use ensembles over model selection are a few questions which remain unanswered. In this paper we present some initial findings using neural network ensembles based on the mean and median applied to forecast synthetic time series data. We vary factors such as the number of models included in the ensemble and how the models are selected, whether randomly or based on performance. We compare the performance of different ensembles to model selection and present the results.

AB - Ensemble methods represent an approach to combine a set of models, each capable of solving a given task, but which together produce a composite global model whose accuracy and robustness exceeds that of the individual models. Ensembles of neural networks have traditionally been applied to machine learning and pattern recognition but more recently have been applied to forecasting of time series data. Several methods have been developed to produce neural network ensembles ranging from taking a simple average of individual model outputs to more complex methods such as bagging and boosting. Which ensemble method is best; what factors affect ensemble performance, under what data conditions are ensembles most useful and when is it beneficial to use ensembles over model selection are a few questions which remain unanswered. In this paper we present some initial findings using neural network ensembles based on the mean and median applied to forecast synthetic time series data. We vary factors such as the number of models included in the ensemble and how the models are selected, whether randomly or based on performance. We compare the performance of different ensembles to model selection and present the results.

U2 - 10.1109/IJCNN.2010.5596686

DO - 10.1109/IJCNN.2010.5596686

M3 - Conference contribution/Paper

SN - 978-1-4244-6917-8

SP - 1

EP - 8

BT - The 2010 International Joint Conference on Neural Networks (IJCNN)

PB - IEEE

CY - New York

ER -