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Estimation theory / Statistical models / Bayesian statistics / Parametric model / Linear regression / Maximum likelihood / Dirichlet process / Mixture model / Loss function / Statistics / Statistical theory / Econometrics
Date: 2008-12-10 22:19:56
Estimation theory
Statistical models
Bayesian statistics
Parametric model
Linear regression
Maximum likelihood
Dirichlet process
Mixture model
Loss function
Statistics
Statistical theory
Econometrics

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