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An Academic Advisor Wants to Predict the Typical Starting Salary β0^=92040β^1=228s=3213r2=.66r=.81df=23t=6.67\hat { \beta _ { 0 } } = - 92040 \hat { \beta } 1 = 228 s = 3213 r ^ { 2 } = .66 r = .81 \quad \mathrm { df } = 23 \quad t = 6.67

Question 18

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An academic advisor wants to predict the typical starting salary of a graduate at a top business school using the GMAT score of the school as a predictor variable. A simple linear regression of
SALARY versus GMAT using 25 data points is shown below. β0^=92040β^1=228s=3213r2=.66r=.81df=23t=6.67\hat { \beta _ { 0 } } = - 92040 \hat { \beta } 1 = 228 s = 3213 r ^ { 2 } = .66 r = .81 \quad \mathrm { df } = 23 \quad t = 6.67
Give a practical interpretation of r2=.66r ^ { 2 } = .66 .


A) 66%66 \% of the sample variation in SALARY can be explained by using GMAT in a straight -line model.
B) We can predict SALARY correctly 66%66 \% of the time using GMAT in a straight-line model.
C) We estimate SALARY to increase $.66\$ .66 for every 1 -point increase in GMAT.
D) We expect to predict SALARY to within 2[.66]2 [ \sqrt { .66 } ] of its true value using GMAT in a straight-line model.

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