Title :
Adaptive polynomial neural networks for times series forecasting
Author :
Liatsis, Panos ; Foka, Amalia ; Goulermas, John Yannis ; Mandic, Lidija
Author_Institution :
City Univ., London
Abstract :
Time series prediction involves the determination of an appropriate model, which can encapsulate the dynamics of the system, described by the sample data. Previous work has demonstrated the potential of neural networks in predicting the behaviour of complex, non-linear systems. In particular, the class of polynomial neural networks has been shown to possess universal approximation properties, while ensuring robustness to noise and missing data, good generalisation and rapid learning. In this work, a polynomial neural network is proposed, whose structure and weight values are determined with the use of evolutionary computing. The resulting networks allow an insight into the relationships underlying the input data, hence allowing a qualitative analysis of the models´ performance. The approach is tested on a variety of non-linear time series data.
Keywords :
genetic algorithms; large-scale systems; neural nets; prediction theory; time series; adaptive polynomial neural networks; approximation properties; evolutionary computing; rapid learning; times series forecasting; Adaptive systems; Art; Biological neural networks; Computer graphics; Computer science; Data engineering; Electronic mail; Load forecasting; Neural networks; Polynomials; Forecasting; Genetic Algorithms; Polynomial Neural Networks; Time Series;
Conference_Titel :
ELMAR, 2007
Conference_Location :
Zadar
Print_ISBN :
978-953-7044-05-3
DOI :
10.1109/ELMAR.2007.4418795