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Statistical inference / Statistical theory / Machine learning / Expectation–maximization algorithm / Gibbs sampling / Hidden Markov model / Bayesian inference / Variational Bayesian methods / Pattern recognition / Statistics / Bayesian statistics / Estimation theory
Date: 2010-06-14 21:27:14
Statistical inference
Statistical theory
Machine learning
Expectation–maximization algorithm
Gibbs sampling
Hidden Markov model
Bayesian inference
Variational Bayesian methods
Pattern recognition
Statistics
Bayesian statistics
Estimation theory

Bayesian Inference for Finite-State Transducers∗ David Chiang1 Jonathan Graehl1 Kevin Knight1

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