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Linear regression / Heteroscedasticity / Generalized method of moments / Instrumental variable / Least squares / Quantile regression / Vector autoregression / Generalized least squares / Gauss–Markov theorem / Statistics / Regression analysis / Econometrics
Date: 2013-01-21 09:40:27
Linear regression
Heteroscedasticity
Generalized method of moments
Instrumental variable
Least squares
Quantile regression
Vector autoregression
Generalized least squares
Gauss–Markov theorem
Statistics
Regression analysis
Econometrics

ECONOMETRICS Bruce E. Hansen c 2000, 20131

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