This paper examines and analyzes different aggregation algorithms to improve accuracy of forecasts obtained using neural network (NN) ensembles. These algorithms include equal-weights combination of Best NN models, combination of trimmed forecasts, and Bayesian Model Averaging (BMA). The predictive performance of these algorithms are evaluated using Australian electricity demand data. The output of the aggregation algorithms of NN ensembles are compared with a Naive approach. Mean absolute percentage error is applied as the performance index for assessing the quality of aggregated forecasts. Through comprehensive simulations, it is found that the aggregation algorithms can significantly improve the forecasting accuracies. The BMA algorithm also demonstrates the best performance amongst aggregation algorithms investigated in this study.
History
Event
International Joint Conference on Neural Networks (2013 : Dallas, Texas)
Pagination
2133 - 2138
Publisher
IEEE
Location
Dallas, Texas
Place of publication
Piscataway, N.J.
Start date
2013-08-04
End date
2013-08-09
ISBN-13
9781467361286
ISBN-10
1467361283
Language
eng
Publication classification
E1 Full written paper - refereed
Copyright notice
2013, IEEE
Title of proceedings
IJCNN 2013 : Proceedings of the 2013 International Joint Conference on Neural Networks