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Estimation theory / Categorical data / Single equation methods / Discrete choice / Mixed logit / Expectation–maximization algorithm / Logit / Multinomial logit / Kenneth E. Train / Statistics / Regression analysis / Statistical models
Date: 2012-09-20 12:09:22
Estimation theory
Categorical data
Single equation methods
Discrete choice
Mixed logit
Expectation–maximization algorithm
Logit
Multinomial logit
Kenneth E. Train
Statistics
Regression analysis
Statistical models

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