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Dirichlet process / Mixture model / Prior probability / Bayesian inference / Hyperparameter / Expectation–maximization algorithm / Constructible universe / Hyperprior / Hidden Markov model / Statistics / Bayesian statistics / Conjugate prior
Date: 2001-04-23 08:50:39
Dirichlet process
Mixture model
Prior probability
Bayesian inference
Hyperparameter
Expectation–maximization algorithm
Constructible universe
Hyperprior
Hidden Markov model
Statistics
Bayesian statistics
Conjugate prior

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