Abstract
The authors present a generalized Hopfield algorithm which is based on the Gramm-Schmidt orthogonal process and the gradient descent approach. The method studies the correlation between input and stored vectors and reduces the cross-correlation noise by using the orthogonal technique. Simulation results have shown an increase in storage capacity with respect to the number of stored vectors. Although one can apply the K-L transform or the discrete cosine transform on the training patterns, the proposed model is much better for practical implementation using a neural network. A significant improvement of the signal-to-noise ratio is obtained. The model is implementable on any 'inner product' version of the Hopfield machine.
Original language | English |
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Title of host publication | China 1991 International Conference on Circuits and Systems |
Publisher | IEEE |
Pages | 1111-1116 |
ISBN (Print) | 780302273 |
Publication status | Published - 1991 |
Event | 1991 IEEE International Joint Conference on Neural Networks - IJCNN '91 - Singapore, Singapore Duration: 18 Nov 1991 → 21 Nov 1991 |
Conference
Conference | 1991 IEEE International Joint Conference on Neural Networks - IJCNN '91 |
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City | Singapore, Singapore |
Period | 18/11/91 → 21/11/91 |