Biomedical Engineering Reference
In-Depth Information
7.3 Conclusion
The paradigm of associative-projective neural networks makes it possible to create
simple and highly productive hardware for the simulation of neural networks
(neurocomputers). Modern electronics make it possible to create neurocomputers
for the simulation of neural networks containing hundreds of thousands of neurons
and hundreds of millions of interneuronal connections. One way to increase neu-
rocomputer speed is to create hardware for the not fully connected structure of
associative-projective neural networks.
References
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