Data processing: artificial intelligence – Neural network – Structure
Patent
1996-07-17
1998-11-24
MacDonald, Allen R.
Data processing: artificial intelligence
Neural network
Structure
706 26, 706 27, G06F 1518
Patent
active
058421904
ABSTRACT:
A network of networks system and method includes a neuron having processing capabilities; a first level module including a network of a plurality of interconnected neurons, the first level module also having processing capabilities; and a second level module including a network of interconnected networks or interconnected neurons, the second level module also having processing capabilities; wherein the first and second level modules are interconnected through neuron to neuron connections such that simultaneous processing can be carried out at by the neuron and by the first and second level modules. The system and method also includes means for forming a boundary between a first module having a first memory state and a second module having a second memory state such that the module comprising the boundary attains a third memory state distinct from the first and second memory states.
REFERENCES:
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Anderson, J.A. et al., Distinctive features, categorical perception, and probability learning; some applications of a neural model, Psychological Review 84:413-451, 1977.
Anderson James A.
Sutton Jeffrey P.
Brown University Research Foundation
MacDonald Allen R.
Shah Sanjiv
The General Hospital Corporation
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