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Science / Recurrent neural network / Artificial neural network / Jürgen Schmidhuber / Neuroevolution / TORCS / Backpropagation / Synaptic weight / Types of artificial neural networks / Neural networks / Cybernetics / Machine learning
Date: 2013-05-22 06:23:16
Science
Recurrent neural network
Artificial neural network
Jürgen Schmidhuber
Neuroevolution
TORCS
Backpropagation
Synaptic weight
Types of artificial neural networks
Neural networks
Cybernetics
Machine learning

Evolving Large-Scale Neural Networks for Vision-Based TORCS Jan Koutník

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