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Statistical models / Estimation theory / Bayesian statistics / Hidden Markov model / Speech recognition / Expectation–maximization algorithm / Bayesian network / Variational Bayesian methods / Mixture model / Statistics / Machine learning / Markov models
Date: 2007-11-16 07:23:54
Statistical models
Estimation theory
Bayesian statistics
Hidden Markov model
Speech recognition
Expectation–maximization algorithm
Bayesian network
Variational Bayesian methods
Mixture model
Statistics
Machine learning
Markov models

Adaptive Training for Large Vocabulary Continuous Speech Recognition Kai Yu Hughes Hall College

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Source URL: mi.eng.cam.ac.uk

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