In using the multiple regression method, we can model the effects of the different levels of a qualitative independent variable by using a/an ____________.
Select one:
a. interaction variable
b. variance equalizing transformation
c. cross-product term
d. quadratic term
e. dummy (indicator) variable
Answer:
Given that:
In using the multiple regression method, we can model the effects of the different levels of a qualitative independent variable by using a/an
here correct option is : dummy(indicator) variable
( in it a qualitative variable with different levels can be given x1,x2,x3...and so on variables which can take 0,1 values)
Option (e) is correct answer
In using the multiple regression method, we can model the effects of the different levels of...
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