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Psychometrics / Statistical models / Bayesian statistics / Differential item functioning / Educational research / Psychological testing / Item response theory / Bayesian network / Bayesian inference / Prior probability / Markov chain Monte Carlo / Logistic regression
Date: 2009-12-24 15:06:36
Psychometrics
Statistical models
Bayesian statistics
Differential item functioning
Educational research
Psychological testing
Item response theory
Bayesian network
Bayesian inference
Prior probability
Markov chain Monte Carlo
Logistic regression

10742_2009_52_Article 1..17

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