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Music / Computer music / Learning / Artificial intelligence / Unsupervised learning / Machine learning / Cognitive science / Generative adversarial network / Generative model / Artificial neural network / Synthesizer / Algorithmic composition
Date: 2018-09-17 07:11:23
Music
Computer music
Learning
Artificial intelligence
Unsupervised learning
Machine learning
Cognitive science
Generative adversarial network
Generative model
Artificial neural network
Synthesizer
Algorithmic composition

Symbolic Music Genre Transfer with CycleGAN Gino Brunner, Yuyi Wang, Roger Wattenhofer and Sumu Zhao* Department of Information Technology and Electrical Engineering ETH Z¨urich Switzerland brunnegi,yuwang,wattenhofer,s

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