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Science / Backpropagation / Artificial neuron / Perceptron / Activation function / Sigmoid function / Connectionism / Function / Derivative / Neural networks / Cybernetics / Mathematics
Date: 2007-02-26 11:23:21
Science
Backpropagation
Artificial neuron
Perceptron
Activation function
Sigmoid function
Connectionism
Function
Derivative
Neural networks
Cybernetics
Mathematics

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