The coefficients for logarithmically transformed explanatory variables when the dependent variable is alsologarithmically transformed should be interpreted as the percent change in the dependent variable for a 1% percent change in the explanatory variable. True or false
Solution :
False
The coefficients for logarithmically transformed explanatory variables when the dependent variable is also logarithmically
transformed should be interpreted as the percent change in the dependent variable for a 1% percent change in
the explanatory variable .
Independent variable is a explanatory variable
The coefficients for logarithmically transformed explanatory variables when the dependent variable is alsologarithmically transformed should be...
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