Respuesta :
Answer:
A) allows the population effect on log earnings of being married to depend on gender
Step-by-step explanation:
The regression equation of a dependent variable based on two or more independent variables is of the form:
[tex]Y=b_{0}+b_{1}X_{1} +b_{2}X_{2}+b_{3}X_{1}X_{2}[/tex]
Here,
Y = dependent variable
[tex]X_{1}[/tex] and [tex]X_{2}[/tex] = independent variables
[tex]X_{1}X_{2}[/tex] = interaction term
[tex]b_{1},\ b_{2}\ and \ b_{3}[/tex] = regression coefficients.
If there is a significant interaction effect present then this implies that the effect of one independent variable ([tex]X_{1}[/tex] or[tex]X_{2}[/tex] ) on the dependent variable (Y) differs every time with different value of the other independent variable ([tex]X_{1}[/tex] or[tex]X_{2}[/tex] ) .
The provided regression equation is:
[tex]Y_{i}=\beta _{0}+\beta _{1}D_{1i}+\beta_{2}D_{2i}+\beta _{3}D_{1i}D_{2i}+u_{i}[/tex]
[tex]Y_{i}[/tex] = dependent variable
[tex]D_{1i}[/tex] and [tex]D_{2i}[/tex] = independent variables
In this case the interaction term is defined as follows:
The effect of being married on log earnings is dependent on different values of the variables [tex]D_{2i}[/tex], i.e. the gender of the [tex]i^{th}[/tex]person.
Thus, the correct option is (A).