Publikationsdatum:
2019-07-13
Beschreibung:
Convergence mechanism of vectors in the Hopfield's neural network is studied in terms of both weights (i.e., inner products) and Hamming distance. It is shown that Hamming distance should not always be used in determining the convergence of vectors. Instead, weights (which in turn depend on the neuron representation) are found to play a more dominant role in the convergence mechanism. Consequently, a new binary neuron representation for associative memory is proposed. With the new neuron representation, the associative memory responds unambiguously to the partial input in retrieving the stored information.
Schlagwort(e):
CYBERNETICS
Materialart:
Optical Pattern Recognition; Jan 17, 1989 - Jan 18, 1989; Los Angeles, CA; United States
Format:
text
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