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What鈥檚 my grade? In Professor Friedman鈥檚 economics course, the correlation

between the students鈥 total scores prior to the final examination and their final exam scores is r = 0.6. The pre-exam totals for all students in the course have a mean of 280 and a standard deviation of 30. The final exam scores have a mean of 75 and a standard deviation of 8. Professor Friedman has lost Julie鈥檚 final exam but knows that her total before the exam was 300. He decides to predict her final exam score from her pre-exam total.

a. Find the equation for the least-squares regression line Professor Friedman should use to make this prediction.

b. Use the least-squares regression line to predict Julie鈥檚 final exam score.

c. Explain the meaning of the phrase 鈥渓east squares鈥 in the context of this question.

d. Julie doesn鈥檛 think this method accurately predicts how well she did on the final exam. Determine r2. Use this result to argue that her actual score could have been much higher (or much lower) than the predicted value.

Short Answer

Expert verified

Part (a) y=30.2+0.16x

Part (b) 78.2is Julie鈥檚 exam score.

Part (c) The squared disparities between the actual final exam score and the anticipated final exam score are minimized using the least-squares regression line.

Part (d) r2=0.36=36%

Step by step solution

01

Part (a) Step 1: Given information

r=0.6x=280y=75sx=30sy=8

02

Part (a) Step 2: Explanation

Thus the slope and the constant will be calculated as:

b=rsysx

=0.6830=0.16

a=ybx=750.16280=30.2

Thus the regression line will be as:

y=a+bxy=30.2+0.16x

03

Part (b) Step 1: Calculation

The regression line is:

y=30.2+0.16x

Thus, the Julie鈥檚 final exam score be as:

y=30.2+0.16x=30.2+0.16(300)=78.2

04

Part (c) Step 1: Calculation

The least-squares regression line is the one that reduces the squared residuals to the smallest possible value. The residuals are the disparities between the observed a the projected values. As a result, the least-squares regression line minimizes the squared differences between the actual final exam score and the predicted final exam score.

05

Part (d) Step 1: Explanation

The value r2is calculated as:

r2=0.62=0.36=36%

This suggests that the regression line can account for 36% of the variation between the variables. Because the regression line only explains 36% of the variation in the final exam score, the final result could diverge significantly from the regression line's anticipated values.

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