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Econometrics / Data analysis / Statistical models / Item response theory / Expectation–maximization algorithm / Normal distribution / Variance / Parameter / Polytomous Rasch model / Statistics / Psychometrics / Estimation theory
Date: 2003-04-09 04:19:56
Econometrics
Data analysis
Statistical models
Item response theory
Expectation–maximization algorithm
Normal distribution
Variance
Parameter
Polytomous Rasch model
Statistics
Psychometrics
Estimation theory

PIRLS 2001 Technical Report, Chapter 11

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Source URL: timssandpirls.bc.edu

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