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Coefficient of determination / Estimator / Effect size / Errors and residuals in statistics / Estimation theory / Instrumental variable / Linear regression / Statistics / Regression analysis / Omitted-variable bias
Date: 2015-01-26 09:40:29
Coefficient of determination
Estimator
Effect size
Errors and residuals in statistics
Estimation theory
Instrumental variable
Linear regression
Statistics
Regression analysis
Omitted-variable bias

Unobservable Selection and Coefficient Stability: Theory and Evidence∗ Emily Oster Brown University and NBER January 26, 2015

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