An article gave a scatter plot along with the least squares line of x = rainfall
ID: 3261003 • Letter: A
Question
An article gave a scatter plot along with the least squares line of x = rainfall volume (m3) and y = runoff volume (m3) for a particular location. The accompanying values were read from the plot.
(b) Calculate point estimates of the slope and intercept of the population regression line. (Round your answers to five decimal places.)
(c) Calculate a point estimate of the true average runoff volume when rainfall volume is 45. (Round your answer to four decimal places.)
________ m3
(d) Calculate a point estimate of the standard deviation . (Round your answer to two decimal places.)
________ m3
(e) What proportion of the observed variation in runoff volume can be attributed to the simple linear regression relationship between runoff and rainfall? (Round your answer to four decimal places.)
Explanation / Answer
Here we can use excel. First we copy the data set in excel in two columns, then we go to Data, we select Data Analysis. Under Data Analysis we can find a list of tests. We select Regression. Next we select the data for Y and X. Finally we click OK; our regression output will be ready.
SUMMARY OUTPUT
Regression Statistics
Multiple R
0.986750567
R Square
0.9737
Adjusted R Square
0.97165181
Standard Error
5.57
Observations
15
ANOVA
df
SS
MS
F
Significance F
Regression
1
14924.25652
14924.26
480.8587
0.0000
Residual
13
403.476812
31.03668
Total
14
15327.73333
Coefficients
Standard Error
t Stat
P-value
Lower 95%
Upper 95%
Intercept
-2.33572
2.538612799
-0.92008
0.374291
-7.820057508
3.14862152
X Variable 1
0.85790
0.039122618
21.92849
1.19E-11
0.773380685
0.94241924
Question b)
Slope = 0.85790
Intercept = -2.33572
Question c)
y^ = -2.33572 + 0.85790x
x = 45
y^ = -2.33572 + (0.85790*45) = 36.27
Question d)
s (Standard deviation) = 5.57
Question e)
The proportion of the observed variation in runoff volume can be attributed to the simple linear regression relationship between runoff and rainfall is 0.9737
SUMMARY OUTPUT
Regression Statistics
Multiple R
0.986750567
R Square
0.9737
Adjusted R Square
0.97165181
Standard Error
5.57
Observations
15
ANOVA
df
SS
MS
F
Significance F
Regression
1
14924.25652
14924.26
480.8587
0.0000
Residual
13
403.476812
31.03668
Total
14
15327.73333
Coefficients
Standard Error
t Stat
P-value
Lower 95%
Upper 95%
Intercept
-2.33572
2.538612799
-0.92008
0.374291
-7.820057508
3.14862152
X Variable 1
0.85790
0.039122618
21.92849
1.19E-11
0.773380685
0.94241924
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