DocumentCode :
1409416
Title :
Lower Upper Bound Estimation Method for Construction of Neural Network-Based Prediction Intervals
Author :
Khosravi, Abbas ; Nahavandi, Saeid ; Creighton, Doug ; Atiya, Amir F.
Author_Institution :
Center for Intelli gent Syst. Res., Deakin Univ., Geelong, VIC, Australia
Volume :
22
Issue :
3
fYear :
2011
fDate :
3/1/2011 12:00:00 AM
Firstpage :
337
Lastpage :
346
Abstract :
Prediction intervals (PIs) have been proposed in the literature to provide more information by quantifying the level of uncertainty associated to the point forecasts. Traditional methods for construction of neural network (NN) based PIs suffer from restrictive assumptions about data distribution and massive computational loads. In this paper, we propose a new, fast, yet reliable method for the construction of PIs for NN predictions. The proposed lower upper bound estimation (LUBE) method constructs an NN with two outputs for estimating the prediction interval bounds. NN training is achieved through the minimization of a proposed PI-based objective function, which covers both interval width and coverage probability. The method does not require any information about the upper and lower bounds of PIs for training the NN. The simulated annealing method is applied for minimization of the cost function and adjustment of NN parameters. The demonstrated results for 10 benchmark regression case studies clearly show the LUBE method to be capable of generating high-quality PIs in a short time. Also, the quantitative comparison with three traditional techniques for prediction interval construction reveals that the LUBE method is simpler, faster, and more reliable.
Keywords :
estimation theory; minimisation; neural nets; prediction theory; probability; simulated annealing; PI-based objective function minimization; cost function minimization; coverage probability; data distribution; interval width probability; lower upper bound estimation method; massive computational loads; neural network-based prediction intervals; simulated annealing method; Artificial neural networks; Bayesian methods; Cost function; Minimization; Training; Uncertainty; Neural network; prediction interval; simulated annealing; uncertainty; Algorithms; Artificial Intelligence; Models, Neurological; Neural Networks (Computer); Predictive Value of Tests; Software Design;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2010.2096824
Filename :
5672788
Link To Document :
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