Neural network trained with spatial errors

Data processing: artificial intelligence – Neural network

Reexamination Certificate

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C706S016000

Reexamination Certificate

active

07409372

ABSTRACT:
A neural network is trained with input data. The neural network is used to rescale the input data. Errors for the rescaled values are determined, and neighborhoods of the errors are used adjust connection weights of the neural network.

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