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Statistical models / Estimation theory / Statistical inference / Probit model / Probit / Dummy variable / Multinomial probit / Maximum likelihood / Normal distribution / Statistics / Econometrics / Regression analysis
Date: 2010-04-30 02:37:24
Statistical models
Estimation theory
Statistical inference
Probit model
Probit
Dummy variable
Multinomial probit
Maximum likelihood
Normal distribution
Statistics
Econometrics
Regression analysis

Modelling Firm Innovation using Panel Probit Estimators∗ Mark N. Harris Melbourne Institute and Central European University, Hungary. Mark Rogers Harris Manchester College, Oxford University, U.K.

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