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Computational neuroscience / Applied mathematics / Cybernetics / Cognitive science / Computational statistics / Machine learning / Emerging technologies / Machine learning algorithms / Artificial neural network / Neural network / Artificial intelligence / Reinforcement learning
Date: 2018-08-06 06:17:49
Computational neuroscience
Applied mathematics
Cybernetics
Cognitive science
Computational statistics
Machine learning
Emerging technologies
Machine learning algorithms
Artificial neural network
Neural network
Artificial intelligence
Reinforcement learning

Learning to generate HTML code from images with no supervisory data Ali Davody * 1 Homa Davoudi * 1 Mihai S. Baba 1 R˘azvan V. FlorianIntroduction

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