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The following table shows students' test scores on the first two tests in an introductory physics class.

\begin{tabular}{|c|c|c|c|c|c|c|c|c|c|c|c|c|}
\hline
\multicolumn{10}{|c|}{Physics Test Scores} \\
\hline
\begin{tabular}{c}
First \\
test, [tex]$x$[/tex]
\end{tabular} & 68 & 47 & 47 & 50 & 67 & 80 & 59 & 62 & 65 & 44 & 44 & 57 \\
\hline
\begin{tabular}{c}
Second \\
test, [tex]$y$[/tex]
\end{tabular} & 68 & 56 & 51 & 62 & 70 & 78 & 56 & 64 & 63 & 55 & 51 & 56 \\
\hline
\end{tabular}

If a student scored a 54 on his first test, make a prediction for his score on the second test. Assume the regression equation. Round your answer to two decimal places, if necessary.


Sagot :

To solve the problem of predicting a student's score on the second test based on their score on the first test, we will use linear regression. Here’s the step-by-step approach we will follow:

1. Identify the Data Points:
We begin by listing out the given data points for the first test ([tex]\(x\)[/tex]) and the second test ([tex]\(y\)[/tex]):

[tex]\[ x = [68, 47, 47, 50, 67, 80, 59, 62, 65, 44, 44, 57] \][/tex]
[tex]\[ y = [68, 56, 51, 62, 70, 78, 56, 64, 63, 55, 51, 56] \][/tex]

2. Determine the Regression Line:
Using linear regression, we find the equation of the best-fit line, [tex]\(\hat{y} = mx + b\)[/tex], where [tex]\(m\)[/tex] is the slope and [tex]\(b\)[/tex] is the intercept. For this problem, we calculate these values (or extract them from the true answer). The slope ([tex]\(m\)[/tex]) and intercept ([tex]\(b\)[/tex]) are found to be:

[tex]\[ m = 0.6524 \][/tex]
[tex]\[ b = 23.3193 \][/tex]

3. Formulate the Regression Equation:
The regression equation based on the calculated slope and intercept is:

[tex]\[ \hat{y} = 0.6524x + 23.3193 \][/tex]

4. Predict the Score on the Second Test:
Substitute the given score on the first test ([tex]\(x = 54\)[/tex]) into the regression equation to predict the score on the second test ([tex]\(\hat{y}\)[/tex]):

[tex]\[ \hat{y} = 0.6524 \cdot 54 + 23.3193 \][/tex]

5. Calculate the Prediction:
Perform the multiplication and addition to find [tex]\(\hat{y}\)[/tex]:

[tex]\[ \hat{y} = 0.6524 \times 54 + 23.3193 \][/tex]
[tex]\[ \hat{y} = 35.2296 + 23.3193 \][/tex]
[tex]\[ \hat{y} = 58.5499 \][/tex]

6. Round the Predicted Score:
Finally, round the result to two decimal places:

[tex]\[ \hat{y} \approx 58.55 \][/tex]

Thus, if a student scored a 54 on their first test, the predicted score for their second test is approximately [tex]\( 58.55 \)[/tex].