
International Journal of Neural Systems, Vol. 7, Nos. 6 (1997) 689
© World Scientific Publishing Company
In this paper we show how dilation and translation of
bipolar signals can be used to increase the capacity of sigma-pi
Hopfield neural networks while keeping their complexity in
check. We propose a generalization of the standard Hebb learning
scheme which gives rise to proper dilation and translation
parameters and apply these generalized Hopfield-type neural
networks to some pattern recognition problems. We will see that
the new approach especially makes sense for highly correlated
information and in cases where the number of multiplicative
synaptic correlations of neural activities is limited for some
theoretical or practical reason and a so-called incomplete
situation appears.