DocumentCode :
1064678
Title :
Recurrent neural networks and robust time series prediction
Author :
Connor, Jerome T. ; Martin, R. Douglas ; Atlas, L.E.
Author_Institution :
Bellcore, Morristown, NJ, USA
Volume :
5
Issue :
2
fYear :
1994
fDate :
3/1/1994 12:00:00 AM
Firstpage :
240
Lastpage :
254
Abstract :
We propose a robust learning algorithm and apply it to recurrent neural networks. This algorithm is based on filtering outliers from the data and then estimating parameters from the filtered data. The filtering removes outliers from both the target function and the inputs of the neural network. The filtering is soft in that some outliers are neither completely rejected nor accepted. To show the need for robust recurrent networks, we compare the predictive ability of least squares estimated recurrent networks on synthetic data and on the Puget Power Electric Demand time series. These investigations result in a class of recurrent neural networks, NARMA(p,q), which show advantages over feedforward neural networks for time series with a moving average component. Conventional least squares methods of fitting NARMA(p,q) neural network models are shown to suffer a lack of robustness towards outliers. This sensitivity to outliers is demonstrated on both the synthetic and real data sets. Filtering the Puget Power Electric Demand time series is shown to automatically remove the outliers due to holidays. Neural networks trained on filtered data are then shown to give better predictions than neural networks trained on unfiltered time series
Keywords :
filtering and prediction theory; learning (artificial intelligence); parameter estimation; recurrent neural nets; stochastic processes; time series; NARMA(p,q) model; Puget Power Electric Demand time series; outlier filtering; parameter estimation; recurrent neural networks; robust time series prediction; Autoregressive processes; Feedforward neural networks; Filtering algorithms; Least squares methods; Load forecasting; Neural networks; Parameter estimation; Predictive models; Recurrent neural networks; Robustness;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/72.279188
Filename :
279188
Link To Document :
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