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Regression analysis / Bayesian statistics / Probit model / Probit / Likelihood function / Maximum likelihood / Normal distribution / Statistics / Estimation theory / Single equation methods
Date: 2006-08-23 10:23:44
Regression analysis
Bayesian statistics
Probit model
Probit
Likelihood function
Maximum likelihood
Normal distribution
Statistics
Estimation theory
Single equation methods

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