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A variable transformation in a regression (e.g., replacing Y with log(Y)) Multiple Choice A. leads to...

A variable transformation in a regression (e.g., replacing Y with log(Y))

Multiple Choice

A. leads to severe autocorrelation.

B.makes the model easier to interpret.

C. changes the model specification.

D. may reduce heteroscedasticity.

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Answer #1

Option c & d

Option c because the scale of independent variable has been changed...so necessary changes would occur in the model

Option d because in many cases of variable transformation,log transform helps heteroscedastic model to become homoscedastic.

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