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Estimation theory / Akaike information criterion / Psychometrics / Expectation–maximization algorithm / Bootstrapping / Structural equation modeling / Bayesian information criterion / Statistics / Statistical inference / Model selection
Date: 2005-05-09 15:04:20
Estimation theory
Akaike information criterion
Psychometrics
Expectation–maximization algorithm
Bootstrapping
Structural equation modeling
Bayesian information criterion
Statistics
Statistical inference
Model selection

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