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Statistical inference / Multivariate statistics / Estimation theory / Econometrics / Regression analysis / Parametric statistics / Linear regression / Statistical hypothesis testing / Instrumental variables estimation / Power / Regression dilution / Correlation and dependence
Date: 2018-03-26 09:15:07
Statistical inference
Multivariate statistics
Estimation theory
Econometrics
Regression analysis
Parametric statistics
Linear regression
Statistical hypothesis testing
Instrumental variables estimation
Power
Regression dilution
Correlation and dependence

Poorly Measured Confounders Are More Useful on the Left Than on the Right Zhuan Pei Dept. of Policy Analysis and Management, Cornell University, Ithaca, NY, USA () ¨ rn-Steffen Pischke

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