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Artificial neural networks / Deep learning / Convolutional neural network / Recurrent neural network / Backpropagation / Autoencoder / Feature learning / Recursive neural network / Long short-term memory / Perceptron / Feedforward neural network / Artificial intelligence
Date: 2015-08-10 12:54:32
Artificial neural networks
Deep learning
Convolutional neural network
Recurrent neural network
Backpropagation
Autoencoder
Feature learning
Recursive neural network
Long short-term memory
Perceptron
Feedforward neural network
Artificial intelligence

REVIEW doi:nature14539 Deep learning Yann LeCun1,2, Yoshua Bengio3 & Geoffrey Hinton4,5

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Source URL: www.cs.toronto.edu

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