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Artificial intelligence / Learning / Machine learning / Computational linguistics / Markov models / Hierarchical hidden Markov model / Bayesian statistics / Speech recognition / Hidden Markov model / Dynamic time warping / Language model / Speech perception
Date: 2014-05-02 16:26:56
Artificial intelligence
Learning
Machine learning
Computational linguistics
Markov models
Hierarchical hidden Markov model
Bayesian statistics
Speech recognition
Hidden Markov model
Dynamic time warping
Language model
Speech perception

One-shot learning of generative speech concepts Brenden M. Lake* Chia-ying Lee* James R. Glass

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