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Statistical theory / Regression analysis / Statistical models / Econometrics / Robust statistics / Semiparametric model / Instrumental variable / Completeness / Nonparametric statistics
Date: 2011-10-17 22:28:39
Statistical theory
Regression analysis
Statistical models
Econometrics
Robust statistics
Semiparametric model
Instrumental variable
Completeness
Nonparametric statistics

CAM Centre for Applied Microeconometrics Department of Economics University of Copenhagen http://www.econ.ku.dk/CAM/

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