# Time Series Prediction Using Evolving Polynomial Neural Networks

@inproceedings{Foka1999TimeSP, title={Time Series Prediction Using Evolving Polynomial Neural Networks}, author={Amalia F. Foka}, year={1999} }

- Published 1999

i DECLARATION No portion of the work referred to in this dissertation has been submitted in support of an application for another degree or qualification of this or any other university or other institution of learning. ii ABSTRACT Real world problems are described by non-linear and chaotic processes which makes them hard to model and predict. The aim of this dissertation is to determine the structure and weights of a polynomial neural network, using evolutionary computing methods, and apply itâ€¦Â CONTINUE READING

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