Answer:
Kindly check explanation
Explanation:
Given :
Regression equation for 2 independent variables :
y=40.7+8.63x1+2.71x2 (model 1)
Regression model for only x1 variable :
y=42.0+9.01x1 (model 2)
The Coefficient of x1 = 8.63 is the change in the estimated predicted value of the dependent variable due to a unit increase in the independent variable (x1) when the other independent variable (x2) is held constant
For Model 2:
The Coefficient of x1 = 9.01 is the change in the estimated predicted value of the dependent variable due to a unit increase in the independent variable (x1)
2.)
Yes, for model 1, we have a multiple regression model (more than 1 independent variable). Multicolinearlity sets in when the independent variables in a multiple regression model are highly correlated. Hence, the Coefficient of each independent variable varies highly when modeled separately compared to when used together to generate a single model. Hence.The reason for the difference.