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Statistics / Statistical theory / Model selection / Scientific modeling / Estimation theory / Statistical models / Akaike information criterion / Bayesian information criterion / F-test / Parameter / Likelihood function / Maximum likelihood estimation
Date: 2009-02-19 12:49:05
Statistics
Statistical theory
Model selection
Scientific modeling
Estimation theory
Statistical models
Akaike information criterion
Bayesian information criterion
F-test
Parameter
Likelihood function
Maximum likelihood estimation

doi:j.cub

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