What is the relationship between the amount of time statistics students study per week and their final exam scores? The results of the survey are shown below. Time Score 4 7 64 79 0 7 68 79 1 5 0 47 67 44 a. Find the correlation coefficient: r= 0.69 Round to 2 decimal places. b. The null and alternative hypotheses fo Enter an integer or decimal number [more..] Ho: po = = 0 H₁: po #0 The p-value is: 2.3646 (Round to four decimal places) c. Use a level of significance of a = 0.05 to state the conclusion of the hypothesis test in the context of the study. O There is statistically significant evidence to conclude that a student who spends more time studying will score higher on the final exam than a student who spends less time studying. 4 2 50 66 O There is statistically significant evidence to conclude that there is a correlation between the time spent studying and the score on the final exam. Thus, the regression line is useful. d. 7² = e. Interpret 7²: O There is statistically insignificant evidence to conclude that there is a correlation between the time spent studying and the score on the final exam. Thus, the use of the regression line is not appropriate. O There is statistically insignificant evidence to conclude that a student who spends more time studying will score higher on the final exam than a student who spends less time studying. (Round to two decimal places) = O47% of all students will receive the average score on the final exam. O There is a large variation in the final exam scores that students receive, but if you only look at students who spend a fixed amount of time studying per week, this variation on average is reduced by 47%. O There is a 47% chance that the regression line will be a good predictor for the final exam score based on the time spent studying. f. The equation of the linear regression line is: Given any group that spends a fixed amount of time studying per week, 47% of all of those students will receive the predicted score on the final exam. (Please show your answers to two decimal places) g. Use the model to predict the final exam score for a student who spends 9 hours per week studying. Final exam score= (Please round your answer to the nearest whole number.) h. Interpret the slope of the regression line in the context of the question: O The slope has no practical meaning since you cannot predict what any individual student will score on the final.

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d. 2
W
e. Interpret ²:
(Round to two decimal places)
O 47% of all students will receive the average score on the final exam.
O There is a large variation in the final exam scores that students receive, but if you only look at
students who spend a fixed amount of time studying per week, this variation on average is
reduced by 47%.
O There is a 47% chance that the regression line will be a good predictor for the final exam score
based on the time spent studying.
O Given any group that spends a fixed amount of time studying per week, 47% of all of those
students will receive the predicted score on the final exam.
f. The equation of the linear regression line is:
ý-
(Please show your answers to two decimal places)
g. Use the model to predict the final exam score for a student who spends 9 hours per week studying.
Final exam score=
(Please round your answer to the nearest whole number.)
h. Interpret the slope of the regression line in the context of the question:
+
O The slope has no practical meaning since you cannot predict what any individual student will
score on the final.
O For every additional hour per week students spend studying, they tend to score on averge 3.27
higher on the final exam.
O As x goes up, y goes up.
i. Interpret the y-intercept in the context of the question;
O The y-intercept has no practical meaning for this study.
The average final exam score is predicted to be 52.
O The best prediction for a student who doesn't study at all is that the student will score 52 on the
final exam.
If a student does not study at all, then that student will score 52 on the final exam.
> Next Question
quap
Transcribed Image Text:d. 2 W e. Interpret ²: (Round to two decimal places) O 47% of all students will receive the average score on the final exam. O There is a large variation in the final exam scores that students receive, but if you only look at students who spend a fixed amount of time studying per week, this variation on average is reduced by 47%. O There is a 47% chance that the regression line will be a good predictor for the final exam score based on the time spent studying. O Given any group that spends a fixed amount of time studying per week, 47% of all of those students will receive the predicted score on the final exam. f. The equation of the linear regression line is: ý- (Please show your answers to two decimal places) g. Use the model to predict the final exam score for a student who spends 9 hours per week studying. Final exam score= (Please round your answer to the nearest whole number.) h. Interpret the slope of the regression line in the context of the question: + O The slope has no practical meaning since you cannot predict what any individual student will score on the final. O For every additional hour per week students spend studying, they tend to score on averge 3.27 higher on the final exam. O As x goes up, y goes up. i. Interpret the y-intercept in the context of the question; O The y-intercept has no practical meaning for this study. The average final exam score is predicted to be 52. O The best prediction for a student who doesn't study at all is that the student will score 52 on the final exam. If a student does not study at all, then that student will score 52 on the final exam. > Next Question quap
What is the relationship between the amount of time statistics students study per week and their final exam
scores? The results of the survey are shown below.
Time
Score
4 7
64 79
0
68
7
79
1 5
47 67
0
44
a. Find the correlation coefficient: r = 0.69
Round to 2 decimal places.
b. The null and alternative hypotheses fo Enter an integer or decimal number [more..]
1
Ho: p = 0
H₁: po 0
d.
2 =
e. Interpret 7²:
The p-value is: 2.3646
(Round to four decimal places)
c. Use a level of significance of a = 0.05 to state the conclusion of the hypothesis test in the context of
the study.
4 2
50 66
O There is statistically significant evidence to conclude that a student who spends more time
studying will score higher on the final exam than a student who spends less time studying.
There is statistically significant evidence to conclude that there is a correlation between the
time spent studying and the score on the final exam. Thus, the regression line is useful.
O There is statistically insignificant evidence to conclude that there is a correlation between the
time spent studying and the score on the final exam. Thus, the use of the regression line is not
appropriate.
O There is statistically insignificant evidence to conclude that a student who spends more time
studying will score higher on the final exam than a student who spends less time studying.
(Round to two decimal places)
+
O 47% of all students will receive the average score on the final exam.
There is a large variation in the final exam scores that students receive, but if you only look at
students who spend a fixed amount of time studying per week, this variation on average is
reduced by 47%.
O There is a 47% chance that the regression line will be a good predictor for the final exam score
based on the time spent studying.
O Given any group that spends a fixed amount of time studying per week, 47% of all of those
students will receive the predicted score on the final exam.
f. The equation of the linear regression line is:
y=
(Please show your answers to two decimal places)
g. Use the model to predict the final exam score for a student who spends 9 hours per week studying.
Final exam score =
(Please round your answer to the nearest whole number.)
h. Interpret the slope of the regression line in the context of the question:
O The slope has no practical meaning since you cannot predict what any individual student will
score on the final.
tuduing thou tond to score on averge 3 27
Transcribed Image Text:What is the relationship between the amount of time statistics students study per week and their final exam scores? The results of the survey are shown below. Time Score 4 7 64 79 0 68 7 79 1 5 47 67 0 44 a. Find the correlation coefficient: r = 0.69 Round to 2 decimal places. b. The null and alternative hypotheses fo Enter an integer or decimal number [more..] 1 Ho: p = 0 H₁: po 0 d. 2 = e. Interpret 7²: The p-value is: 2.3646 (Round to four decimal places) c. Use a level of significance of a = 0.05 to state the conclusion of the hypothesis test in the context of the study. 4 2 50 66 O There is statistically significant evidence to conclude that a student who spends more time studying will score higher on the final exam than a student who spends less time studying. There is statistically significant evidence to conclude that there is a correlation between the time spent studying and the score on the final exam. Thus, the regression line is useful. O There is statistically insignificant evidence to conclude that there is a correlation between the time spent studying and the score on the final exam. Thus, the use of the regression line is not appropriate. O There is statistically insignificant evidence to conclude that a student who spends more time studying will score higher on the final exam than a student who spends less time studying. (Round to two decimal places) + O 47% of all students will receive the average score on the final exam. There is a large variation in the final exam scores that students receive, but if you only look at students who spend a fixed amount of time studying per week, this variation on average is reduced by 47%. O There is a 47% chance that the regression line will be a good predictor for the final exam score based on the time spent studying. O Given any group that spends a fixed amount of time studying per week, 47% of all of those students will receive the predicted score on the final exam. f. The equation of the linear regression line is: y= (Please show your answers to two decimal places) g. Use the model to predict the final exam score for a student who spends 9 hours per week studying. Final exam score = (Please round your answer to the nearest whole number.) h. Interpret the slope of the regression line in the context of the question: O The slope has no practical meaning since you cannot predict what any individual student will score on the final. tuduing thou tond to score on averge 3 27
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