Data processing: artificial intelligence – Neural network – Learning method
Reexamination Certificate
2005-12-13
2005-12-13
Knight, Anthony (Department: 2121)
Data processing: artificial intelligence
Neural network
Learning method
C706S023000, C706S015000
Reexamination Certificate
active
06976012
ABSTRACT:
A method and apparatus of training a neural network. The method and apparatus include creating a model for a desired function as a multi-dimensional function, determining if the created model fits a simple finite geometry model, and generating a Radon transform to fit the simple finite geometry model. The desired function is fed through the Radon transform to generate weights. A multilayer perceptron of the neural network is trained using the weights.
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