What does the value of r-square tell us about our modelwhat


QUESTION 1 : Please look at the following output from the regression.

What does the value of R-square tell us about our model?

Note: It is not sufficient to just provide some general answers. Use the numbers from the output, and write your answers specific to our regression model.

Model Summary

Model

R

R Square

Adjusted R Square

Std. Error of the Estimate

1

.771a

.594

.580

21.741

a. Predictors: (Constant), DENSITY

QUESTION 2 : Please look at the following output from the regression.

What do the value of F-test and its P-value tell us about our model?

Note: It is not sufficient to just provide some general answers. Use the numbers from the output, and write your answers specific to our regression model.

ANOVAa

Model

Sum of Squares

df

Mean Square

F

Sig.

1

Regression

20747.246

1

20747.246

43.895

.000b

Residual

14179.629

30

472.654

 

 

Total

34926.875

31

 

 

 

a. Dependent Variable: SALES

b. Predictors: (Constant), DENSITY

QUESTION 3 : The regression coefficient output is shown below.

Does Density matter in terms of explaining sales? Can you provide an explanation of the coefficient estimate for Density? (Note: the unit of Density is number of homes per acre, and the unit of Sales is dollars per thousand homes ).

Coefficientsa

Model

Unstandardized Coefficients

Standardized Coefficients

t

Sig.

B

Std. Error

Beta

1

(Constant)

141.525

9.109

 

15.538

.000

DENSITY

-12.893

1.946

-.771

-6.625

.000

a. Dependent Variable: SALES

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QUESTION 4 : Managers suspect that the effect of Density on Sales can be nonlinear; in other words, as density increases, there will a decreasing marginal effect on density. To test this idea, they ran an additional regression, with Density and Density_Squared (i.e. Density*Density) as the independent variables (again, Sales as the dependant variable), and the output of the new regression shows below.

Can you explain what the R_square and F-test tell us about the new model? Is the new model better than the model with only Density as the independent variable?

Model Summary

Model

R

R Square

Adjusted R Square

Std. Error of the Estimate

1

.910a

.829

.817

14.354

a. Predictors: (Constant), Density2, DENSITY


ANOVAa

Model

Sum of Squares

df

Mean Square

F

Sig.

1

Regression

28951.384

2

14475.692

70.253

.000b

Residual

5975.491

29

206.051

 

 

Total

34926.875

31

 

 

 

a. Dependent Variable: SALES

b. Predictors: (Constant), Density2, DENSITY

Coefficientsa

Model

Unstandardized Coefficients

Standardized Coefficients

t

Sig.

B

Std. Error

Beta

1

(Constant)

212.595

12.768

 

16.650

.000

DENSITY

-47.293

5.601

-2.827

-8.444

.000

Density2

3.419

.542

2.113

6.310

.000

a. Dependent Variable: SALES

QUESTION 5 : Continuing from Question 4, can you explain the meaning of the coefficient estimate of Density_Squared (i.e. Density*Density)? (Hint: the effect of Density on Sales is negative, while the effect of Density_Squared on Sales is positive).

Attachment:- data.rar

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Marketing Research: What does the value of r-square tell us about our modelwhat
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