The paper proposes and evaluates a binary network
architecture and complementary training algorithm designed
for pattern classification, with applications in a variety
of engineering problems. The advantages of the system are
that it can always converge on zero error for a set of
unambiguous training patterns (if required), converges
rapidly, and circumvents the issue of how many hidden neurons
to incorporate in a network. The main benefit of the proposed
system over Hamming networks, its main counterpart, is
that it can group patterns into different classes along
any boundary. The system is shown to outperform 1) the
Hamming network for a character recognition problem where
the images are subject to both position change and noise;
and 2) a radial-Gaussian network in a truck-type classification
problem. A variant of the system, where hidden neuron thresholds
are set to zero, is shown to further improve performance
if a comprehensive set of noise-free input patterns are
available for training.