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Linear regression / Instrumental variable / Omitted-variable bias / Causality / Correlation and dependence / Spurious relationship / Graphical model / Conditioning / Control theory / Statistics / Regression analysis / Econometrics
Date: 2015-02-23 19:32:18
Linear regression
Instrumental variable
Omitted-variable bias
Causality
Correlation and dependence
Spurious relationship
Graphical model
Conditioning
Control theory
Statistics
Regression analysis
Econometrics

Submitted. TECHNICAL REPORT R-449 February 2015

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