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Regression analysis / Multicollinearity / Variance inflation factor / Dummy variable / Interaction / Omitted-variable bias / Dependent and independent variables / Categorical variable / Linear regression / Spike-and-slab variable selection
Date: 2008-03-12 14:38:04
Regression analysis
Multicollinearity
Variance inflation factor
Dummy variable
Interaction
Omitted-variable bias
Dependent and independent variables
Categorical variable
Linear regression
Spike-and-slab variable selection

Mgmt 469 Model Specification: Choosing the Right Variables for the Right Hand Side Even if you have only a handful of predictor variables to choose from, there are infinitely many ways to specify the right hand side of a

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