Question
Question 1(3 points) Listen Focus Logistic and multiple regression have the same type of outcome variables Question 1 options: True False Question 2(3 points) Listen
Question 1(3 points)
ListenFocus
Logistic and multiple regression have the same type of outcome variables
Question 1 options:
True | |
False |
Question 2(3 points)
Listen
What transformation does this represent?
{"version":"1.1","math":""}
Question 2 options:
Question 3(2 points)
Listen
Question 3 options:
Parabolic | |
Negative | |
No relationship | |
Positive |
Question 4(2 points)
Listen
An assumption of linear regression is that the relationship betweenxandycan be modeled by a straight line
Question 4 options:
True | |
False |
Question 5(3 points)
Listen
You find an outlier than influences your regression line. The first thing you should do is...
Question 5 options:
Remove it to assure your regression line is strong | |
Investigate the point further to see if there is a reason to worry about it | |
Log-transform it | |
Leave it in |
Question 6(3 points)
Listen
Question 6 options:
are observations that fall far from the "cloud" of points
Question 7(2 points)
Listen
The line that minimizes the sum of squared residuals is commonly called the
Question 7 options:
minimal squared residual | |
line of lowest sum | |
maximum likelihood | |
least squares line |
Question 8(2 points)
Listen
Which of the following describes the amount of variation in the response that is explained by the least squares line?
Question 8 options:
Line of best fit | |
Variability | |
{"version":"1.1","math":""} | |
{"version":"1.1","math":""} |
Question 9(2 points)
Listen
The line of best fit in linear regression will be the one that has the maximizes the sum of the squared residuals
Question 9 options:
True | |
False |
Question 10(2 points)
Listen
Which of the following are assumptions when fitting a least squares line in linear regression? (Select all that apply)
Question 10 options:
Linearity: The data should show a linear trend | |
Nearly normal residuals: generally the residuals must be nearly normal | |
Constant variability: Variability of points around the least squares line must remain roughly constant | |
Symmetry: Lines of best fit should fit symmetrically along the median value |
Question 11(2 points)
Listen
Question 11 options:
Thet-value was obtained by dividing the estimate by standard error | |
The 'unemp' coefficient is significant | |
At-value of -1.23 is significant | |
None of these |
Question 12(2 points)
Listen
You run a regression forxpredictingyand find thep-value to be .04. Which of the following can you say most comfortably?
Question 12 options:
The finding indicatesxstrongly predictsy | |
Given the assumptions have been met, y significantly predictsx, but we can't be sure if it is important | |
None of these | |
Only 4% of the time would you expect to find a test statistic as extreme or more, assuming the null hypothesis is true |
Question 13(4 points)
Listen
You can actually improve model fit by removing (a) predictor(s) in multiple regression.
Question 13 options:
True | |
False |
Question 14(3 points)
Listen
Question 14 options:
Question 15(3 points)
Listen
The proper estimate of variance explained in multiple regression is
Question 15 options:
All of these | |
{"version":"1.1","math":""} | |
Adjusted{"version":"1.1","math":""} | |
>50% significant predictors |
Question 16(3 points)
Listen
In multiple regression, you can have nominal and continuous predictors
Question 16 options:
True | |
False |
Question 17(3 points)
Listen
Question 17 options:
Both | |
Neither | |
'pubs' | |
'time' |
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