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Regression analysis / Statistics / Estimation theory / Simultaneous equation methods / Parametric statistics / Statistical models / Instrumental variable / Endogeneity / Ordinary least squares / Variance / Dependent and independent variables / Linear regression
Date: 2015-04-21 13:14:53
Regression analysis
Statistics
Estimation theory
Simultaneous equation methods
Parametric statistics
Statistical models
Instrumental variable
Endogeneity
Ordinary least squares
Variance
Dependent and independent variables
Linear regression

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