The Autoassociative-Heteroassociative Neural Network (A-HNN) is a unique in
tegration of autoassociative and heteroassociative neural network mappings
to provide a functional approximation of two variables from one. This new a
rchitecture provides three features: the autoassociative mapping enables a
stability metric for assessing the robustness or accuracy of the heteroasso
ciative mapping; the A-HNN generates the inverse of the encoding portion of
an associated autoassociative neural network (AANN); and, empirically, the
use of input data as target vectors (the autoassociative mapping) improves
training performance of the network. Published by Elsevier Science Ltd.