Ekaterina Antipova
Publications:
Antipova E. S., Rashkovskiy S. A.
Autoassociative Hamming Neural Network
2021, Vol. 17, no. 2, pp. 175-193
Abstract
An autoassociative neural network is suggested which is based on the calculation of Hamming
distances, while the principle of its operation is similar to that of the Hopfield neural network.
Using standard patterns as an example, we compare the efficiency of pattern recognition for the
autoassociative Hamming network and the Hopfield network. It is shown that the autoassociative
Hamming network successfully recognizes standard patterns with a degree of distortion up to
40% and more than 60%, while the Hopfield network ceases to recognize the same patterns with
a degree of distortion of more than 25% and less than 75%. A scheme of the autoassociative
Hamming neural network based on McCulloch – Pitts formal neurons is proposed. It is shown
that the autoassociative Hamming network can be considered as a dynamical system which has
attractors that correspond to the reference patterns. The Lyapunov function of this dynamical
system is found and the equations of its evolution are derived.
|