Question 1
A residual is:
choose one
The difference between a data point and the regression line.
A value that can be 1 or zero.
A value that is always negative because it is a difference
The difference between two different lines.
Question 2
The correlation coefficient:
choose one
Is a number with a range from -1 to 1
If there is no correlation, the coefficient is negative
If the correlation coefficient is negative, it indicates astrong positive relationship between x and y
All of the above
Question 3
The assumptions we use to determine the validity of predictionsinclude:
choose one
For every specific value of y, the value of x must be normallydistributed about the regression line.
The sample was collected carefully
The standard deviation of each dependent variable must be thesame for each independent variable
All of the above
Question 4
A positive straight line relationship:
choose one
Show no change in the variables
Show that both variables increase in value
Shows that as the values of x increases, the values of ydecreases
Slopes down
Question 5
Because some people are unable to stand to have their heightmeasured, doctors use the height from the floor to the knee toapproximate their patients’ height (in cm).
Height of Knee | Overall Height |
57 | 192 |
47 | 153 |
43 | 146 |
44 | 160 |
55 | 171 |
54 | 176 |
a. Use Excel to determine the correlation coefficient of thisdata
b. Use Excel to determine the regression equation of thisdata
c. Find the overall height from a knee height of 45.3 cm
d. Find the overall height from a knee height of 52.7 cm
Choose one
a. r = 0.73220213
b. Equation: y = 2.0217x + 67.746
c. 159.32901
d. 174.28959
a. r = 0.82544241
b. Equation: y = 2.5109x + 40.79
c. 154.53377
d. 173.11443
a. r = 0.53611996
b. Equation: y = 2.0217x + 67.746
c. 159.32901
d. 174.28959
a. r = 0.908553861
b. Equation: y = 2.5109x + 40.79
c. 154.53377
d. 173.11443
Question 6
The coefficient of determination:
Choose one
Represents the percentage of the data that can be explained bythe correlation
Is equal to the ratio of the explained variation to the totalvariation
Is calculated by squaring the correlation coefficient.
All of the above
Question 7
A simple regression model uses a straight line to makepredictions about future events.
Choose one
Question 8
Once we have a simple regression line, we can use it to predictvalues for the independent variable X and the dependent variableY.
Choose one
Question 9
The independent variable is represented by a y.
Choose one
Question 10
Outliers:
Choose one
Greatly affect the value of r
Should be identified and taken out of the data before anycorrelation analysis
Are easily identified in a scatterplot
All of the above