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Bayesian inference / Cluster analysis / Statistical models / Expectation–maximization algorithm / Latent class model / Mixture model / Bayes factor / Exponential random graph models / Akaike information criterion / Statistics / Model selection / Estimation theory
Date: 2008-05-20 22:04:54
Bayesian inference
Cluster analysis
Statistical models
Expectation–maximization algorithm
Latent class model
Mixture model
Bayes factor
Exponential random graph models
Akaike information criterion
Statistics
Model selection
Estimation theory

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