A simple linear regression analysis was conducted to predict the
Exam 3 score of students in STA 2023 based on their Exam 1
score.
The analysis yielded the following results:
y-hat = 50.57+0.4845x.
The range of exam scores for both tests was about 30 points to 102
points. Which of the following is the best description of the
y-intercept of the line(if appropriate)?
Group of answer choices
When the exam 1 grade increases by 1 point, the exam 3 grade increases by 0.4845.
When the exam 1 grade increases by 1 point, the exam 3 grade increases by 50.57.
The expected Exam 3 score for someone that made a 0 on Exam 1 is a 50.57.
Should not be interpreted.
y-hat = 50.57+0.4845x. (This is the given regression equation)
y intercept is 50.57
We know that the y intercept is the value of y when x is 0, i.e. when the score on exam 1 is 0
So, y intercept is the exam 3 score for a student who made a score of 0 on exam 1.
option C is correct
The expected Exam 3 score for someone that made a 0 on Exam 1 is a 50.57.
A simple linear regression analysis was conducted to predict the Exam 3 score of students in...
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