EXHIBIT 4 Exhibit 4 shows the multiple linear regression with (alpha) = 0.05, fo
ID: 3248173 • Letter: E
Question
EXHIBIT 4
Exhibit 4 shows the multiple linear regression with (alpha) = 0.05, for the percentage of high school graduates who attend four-year college (college attendance rate).
1. Applying the estimated regression function, you can predict that a school district with 18 students as the average class size and 950 as the combined SAT score will have _____ of students who attend four-year college.
78%
73%
69%
67%
2. How many percent of college attendance rate’s variation can be determined by the independent variables in this regression?
38%
60%
30%
6.2%
3. For some reason, the standard error for the average class size is missing. The value of the standard error should be
unavailable unless using MS Excel calculation.
2.056.
1.007
0.993.
4. Can you confirm the estimated equation’s overall significance by F-test?
No, because the p-value
of Average Class Size is greater than 0.05.
Yes, because the p-value
of F test is less than 0.05.
Yes, because the test statistic is negative.
No, because the p-value
of F test is greater than 0.025.
5. Which of the following modifications is least likely to raise R-square in this case?
Choose another data set for a higher R square and consistent testing results.
Drop the independent variable of average class size.
Keep all variables and change the model to be exponential (log-linear) model. .
Add another independent variable such as student family income.
Class Size (# of students) -1.4297536 ? -1.43972625 0.17048811 Combined
SAT Score 0.07573703 0.039055144 1.93923323 0.07151948
Explanation / Answer
1. Given Class Size X1= 18, combined SAT score X2 = 950
school distric Y = 26.7066982 -1.4297536 X1 + 0.07573703X3
=26.7066982 -1.4297536 (18) + 0.07573703(950)
= 72.92157
2. R2 = 0.38214719 = 38.215% of variations in the variable Y can be explained by the independent variables X1 and X2
Correct ansewr: option (A) 0..38 = 38%
3. SE of average class size = -1.4297536 / -1.43972625 = 0.99305
4. P-value of Regression is 0.027017036 < alpha 0.05, So we reject H0
Thus we conclude that the regression line is best fit to the given data
Correct Answer: Option (B) Yes, because the p-value of F test is less than 0.05.
5. Correct Answer: option (B) Drop the independent variable of average class size.
3.
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