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Artificial intelligence / Computational neuroscience / Learning / Network architecture / Perceptron / Recurrent neural network / Supervised learning / Early stopping / Support vector machine / Machine learning / Neural networks / Statistics
Date: 2009-10-08 18:54:27
Artificial intelligence
Computational neuroscience
Learning
Network architecture
Perceptron
Recurrent neural network
Supervised learning
Early stopping
Support vector machine
Machine learning
Neural networks
Statistics

Curriculum Learning Yoshua Bengio1 J´ erˆ

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