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Hierarchical Bayes model / Latent variable / Prior probability / Structural equation modeling / Graphical model / Gibbs sampling / Strong prior / Markov chain Monte Carlo / Bayesian network / Statistics / Bayesian statistics / Bayesian inference
Date: 2013-01-15 18:54:47
Hierarchical Bayes model
Latent variable
Prior probability
Structural equation modeling
Graphical model
Gibbs sampling
Strong prior
Markov chain Monte Carlo
Bayesian network
Statistics
Bayesian statistics
Bayesian inference

Bayesian Structural Equation Models: A Health Application

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