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Statistical theory / Statistical methods / Statistical inference / Maximum likelihood / Mixed model / Empirical Bayes method / SAS / Likelihood function / Generalized linear mixed model / Statistics / Estimation theory / Regression analysis
Date: 2007-05-17 15:04:53
Statistical theory
Statistical methods
Statistical inference
Maximum likelihood
Mixed model
Empirical Bayes method
SAS
Likelihood function
Generalized linear mixed model
Statistics
Estimation theory
Regression analysis

SAS Global ForumStatistics and Data Analysis Paper

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