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Brandon Bretl
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Terrence Jorgensen
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1/6/20
MIMIC Modeling with Dummies
Is it accurate to say I am controlling for these variables when I regress the factor on them? Every
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MIMIC
directeffect
dummy_variable
noninvariance
regression
MIMIC Modeling with Dummies
Is it accurate to say I am controlling for these variables when I regress the factor on them? Every
1/6/20