DocumentCode :
312093
Title :
Complexity modelling and stability characterisation for long term iterated time series prediction
Author :
Lowe, David ; Hazarika, Neep
Author_Institution :
Neural Comput. Res. Group, Aston Univ., Birmingham, UK
fYear :
1997
fDate :
7-9 Jul 1997
Firstpage :
53
Lastpage :
58
Abstract :
The authors describe a method of estimating and characterising appropriate data and model complexity in the context of long term iterated time series forecasting. In addition they also examine the stability of the neural network approach by extracting the dominant Lyapunov exponent from the neural network model itself. They extend the philosophy that the iterated prediction of a dynamical system can be interpreted through a model of the system dynamics. An embedding of a signal is obtained which decouples multiple time scale effects such as seasonality and trend. The performance of the technique is tested using a synthetic series, and real world time series problems including electricity load forecasting, and financial futures contracts
Keywords :
stability; complexity modelling; data complexity; dominant Lyapunov exponent extraction; dynamical system; electricity load forecasting; financial futures contracts; long term iterated time series prediction; model complexity; multiple time scale effects; neural network approach; real world time series problems; seasonality; signal embedding; stability characterisation; synthetic series; system dynamics; trend;
fLanguage :
English
Publisher :
iet
Conference_Titel :
Artificial Neural Networks, Fifth International Conference on (Conf. Publ. No. 440)
Conference_Location :
Cambridge
ISSN :
0537-9989
Print_ISBN :
0-85296-690-3
Type :
conf
DOI :
10.1049/cp:19970701
Filename :
607492
Link To Document :
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