Artificial neuron and method of using same

Data processing: artificial intelligence – Neural network – Structure

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706 41, G06F 1518

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061515949

ABSTRACT:
An artificial neuron, which may be implemented either in hardware or software, has only one significant processing element in the form of a multiplier. Inputs are first fed through gating functions to produce gated inputs. These gated inputs are then multiplied together to produce a product which is multiplied by a weight to produce the neuron output.

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