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Cybernetics / Science / Learning / Computational statistics / Network architecture / Artificial neural network / Hopfield network / Connectionism / Backpropagation / Neural networks / Computational neuroscience / Machine learning
Date: 2008-01-11 08:15:17
Cybernetics
Science
Learning
Computational statistics
Network architecture
Artificial neural network
Hopfield network
Connectionism
Backpropagation
Neural networks
Computational neuroscience
Machine learning

Ra´ul Rojas Neural Networks

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Source URL: www.inf.fu-berlin.de

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