Self-orthogonalization associative memories

W. F. Leung, S. H. Leung, A. Luk, W. H. Lau

Research output: Chapters, Conference Papers, Creative and Literary WorksRGC 32 - Refereed conference paper (with host publication)peer-review

1 Citation (Scopus)

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 languageEnglish
Title of host publicationChina 1991 International Conference on Circuits and Systems
PublisherIEEE
Pages1111-1116
ISBN (Print)780302273
Publication statusPublished - 1991
Event1991 IEEE International Joint Conference on Neural Networks - IJCNN '91 - Singapore, Singapore
Duration: 18 Nov 199121 Nov 1991

Conference

Conference1991 IEEE International Joint Conference on Neural Networks - IJCNN '91
CitySingapore, Singapore
Period18/11/9121/11/91

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