DocumentCode :
1285614
Title :
Comprehensive Review of Neural Network-Based Prediction Intervals and New Advances
Author :
Khosravi, Abbas ; Nahavandi, Saeid ; Creighton, Doug ; Atiya, Amir F.
Author_Institution :
Centre for Intell. Syst. Res., Deakin Univ., Geelong, VIC, Australia
Volume :
22
Issue :
9
fYear :
2011
Firstpage :
1341
Lastpage :
1356
Abstract :
This paper evaluates the four leading techniques proposed in the literature for construction of prediction intervals (PIs) for neural network point forecasts. The delta, Bayesian, bootstrap, and mean-variance estimation (MVE) methods are reviewed and their performance for generating high-quality PIs is compared. PI-based measures are proposed and applied for the objective and quantitative assessment of each method´s performance. A selection of 12 synthetic and real-world case studies is used to examine each method´s performance for PI construction. The comparison is performed on the basis of the quality of generated PIs, the repeatability of the results, the computational requirements and the PIs variability with regard to the data uncertainty. The obtained results in this paper indicate that: 1) the delta and Bayesian methods are the best in terms of quality and repeatability, and 2) the MVE and bootstrap methods are the best in terms of low computational load and the width variability of PIs. This paper also introduces the concept of combinations of PIs, and proposes a new method for generating combined PIs using the traditional PIs. Genetic algorithm is applied for adjusting the combiner parameters through minimization of a PI-based cost function subject to two sets of restrictions. It is shown that the quality of PIs produced by the combiners is dramatically better than the quality of PIs obtained from each individual method.
Keywords :
Bayes methods; genetic algorithms; minimisation; neural nets; Bayesian method; MVE method; PI construction; PI-based cost function; PI-based measure; bootstrap method; combiner parameter; data uncertainty; delta method; genetic algorithm; mean-variance estimation; minimization; neural network point forecast; neural network-based prediction interval; Artificial neural networks; Bayesian methods; Cost function; Estimation; Minimization; Training; Uncertainty; Bayesian; bootstrap; delta; mean-variance estimation; neural network; prediction interval; Algorithms; Animals; Bayes Theorem; Computer Simulation; Humans; Neural Networks (Computer); Predictive Value of Tests; Time Factors;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2011.2162110
Filename :
5966350
Link To Document :
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