John R. McDonnellDonald WaagenWard Page
This work investigates the application of evolutionary programming for automatically configuring neural network architectures for pattern classification tasks. The evolutionary programming search procedure implements a parallel nonlinear regression technique and represents a powerful method for evaluating a multitude of neural network model hypotheses. The evolutionary programming search is augmented with the Solis & Wets random optimization method thereby maintaining the integrity of the stochastic search while taking into account empirical information about the response surface. A network architecture is proposed which is motivated by the structures generated in projection pursuit regression and the cascade-correlation learning architecture. Results are given for the 3-bit parity, normally distributed data, and the T-C classifier problems.
John R. McDonnellDonald Waagen
Steven W. WorrellJames A. RobertsonThomas L. VarnerCharles G. Garvin
A. V. PavlovL. F. PetrovaE. I. Shubnikov