Data processing: artificial intelligence – Neural network
Reexamination Certificate
2007-11-06
2007-11-06
Vincent, David (Department: 2129)
Data processing: artificial intelligence
Neural network
C706S016000, C706S026000, C706S027000, C706S031000
Reexamination Certificate
active
10174038
ABSTRACT:
A method for organizing processors to perform artificial neural network tasks is provided. The method provides a computer executable methodology for organizing processors in a self-organizing, data driven, learning hardware with local interconnections. A training data is processed substantially in parallel by the locally interconnected processors. The local processors determine local interconnections between the processors based on the training data. The local processors then determine, substantially in parallel, transformation functions and/or entropy based thresholds for the processors based on the training data.
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Calfee Halter & Griswold LLP
Fernández Rivas Omar F
Ohio University
Vincent David
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