Deck 14: Missing Values

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Question
Which type of validity can be affected by missing values problems?

A) Statistical conclusion validity
B) Internal validity
C) External validity
D) All three types of validity
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Question
Which of the following statements is true?

A) The pattern of missingness is often more important than the amount of missing values in addressing the problem.
B) Missing values strategies are only appropriate for quantitative (not categorical) variables.
C) When values are missing, there is a greater risk of a Type I error than a Type II error.
D) Missing values can be addressed for independent variables, but not for dependent variables.
Question
If people who were obese were more likely than others to skip a question about their weight, the missing data would be:

A) Missing completely at random
B) Missing at random
C) Missing not at random
D) Inadequate information to make a determination
Question
Suppose that people who were obese were just as likely as others to skip a question about their weight, but that women were more likely than men to omit this information. In this situation, the missing data would be:

A) Missing completely at random
B) Missing at random
C) Missing not at random
D) Inadequate information to make a determination
Question
Which pattern of missingness yields unbiased parameter estimates, regardless of which method of addressing the problem is used?

A) Missing completely at random
B) Missing at random
C) Missing not at random
D) All but MNAR (nonignorable missingness)
Question
Which approach to solving missing values problems does not reduce statistical power?

A) Deletion methods
B) Imputation methods
C) Both approaches are the same with regard to power.
D) It depends on which particular imputation or deletion method is used.
Question
Which approach is called complete case analysis?

A) Listwise deletion
B) Pairwise deletion
C) Regression imputation
D) Mean substitution
Question
Which approach is a reasonable approach to imputing item values on a multi-item scale?

A) Mean substitution
B) Conditional (subgroup) mean substitution
C) Case mean substitution
D) Variable (item) deletion
Question
Which imputation approach is most often used to estimate outcomes in a randomized clinical trial?

A) Mean substitution
B) Regression imputation
C) Worst case imputation
D) Last observation carried forward
Question
When researchers in a clinical trial analyze outcomes for all study participants who were randomly assigned to a treatment group, regardless of whether they received the treatment or dropped out of the study, the analysis is called:

A) A complete case analysis
B) An intention to treat analysis
C) An available case analysis
D) None of the above
Question
Which approach would replace missing values based on using an equation such as the following: Missing Value = 10.0 + (2.5 * VAR1) + (1.8 * VAR2) + (3.0 * VAR3)?

A) Mean substitution
B) Conditional (subgroup) mean substitution
C) Regression imputation
D) Regression imputation with error
Question
Which of the following is not a type of single imputation?

A) Regression imputation
B) Stochastic regression imputation
C) Expectation-maximization imputation
D) They are all single imputation methods.
Question
In multiple imputation, m represents:

A) The number of variables being imputed
B) The number of predictors used in the imputation
C) The number of datasets that are created
D) The number of cases with missing values
Question
If VAR1 has 5% missing, VAR2 has 5% missing, and VAR3 has 10% missing, which of the following is true?

A) 90% of the participants have no missing values on VAR1 to VAR3
B) 85% of the participants have no missing values on VAR1 to VAR3
C) Between 80% and 90% of the participants have no missing values on VAR1 to VAR3
D) The amount of nonmissingness on VAR1 to VAR3 for participants cannot be determined.
Question
Which of the following strategies is advisable in addressing missing values problems?

A) Assume missing values are MCAR unless there is evidence to the contrary.
B) Undertake sensitivity analyses to see if substantive results are robust to different missing values strategies.
C) If the amount of missing values is less than 5%, ignore the problem.
D) None of the above
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Deck 14: Missing Values
1
Which type of validity can be affected by missing values problems?

A) Statistical conclusion validity
B) Internal validity
C) External validity
D) All three types of validity
D
2
Which of the following statements is true?

A) The pattern of missingness is often more important than the amount of missing values in addressing the problem.
B) Missing values strategies are only appropriate for quantitative (not categorical) variables.
C) When values are missing, there is a greater risk of a Type I error than a Type II error.
D) Missing values can be addressed for independent variables, but not for dependent variables.
A
3
If people who were obese were more likely than others to skip a question about their weight, the missing data would be:

A) Missing completely at random
B) Missing at random
C) Missing not at random
D) Inadequate information to make a determination
C
4
Suppose that people who were obese were just as likely as others to skip a question about their weight, but that women were more likely than men to omit this information. In this situation, the missing data would be:

A) Missing completely at random
B) Missing at random
C) Missing not at random
D) Inadequate information to make a determination
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5
Which pattern of missingness yields unbiased parameter estimates, regardless of which method of addressing the problem is used?

A) Missing completely at random
B) Missing at random
C) Missing not at random
D) All but MNAR (nonignorable missingness)
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6
Which approach to solving missing values problems does not reduce statistical power?

A) Deletion methods
B) Imputation methods
C) Both approaches are the same with regard to power.
D) It depends on which particular imputation or deletion method is used.
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Unlock for access to all 15 flashcards in this deck.
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7
Which approach is called complete case analysis?

A) Listwise deletion
B) Pairwise deletion
C) Regression imputation
D) Mean substitution
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8
Which approach is a reasonable approach to imputing item values on a multi-item scale?

A) Mean substitution
B) Conditional (subgroup) mean substitution
C) Case mean substitution
D) Variable (item) deletion
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k this deck
9
Which imputation approach is most often used to estimate outcomes in a randomized clinical trial?

A) Mean substitution
B) Regression imputation
C) Worst case imputation
D) Last observation carried forward
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Unlock for access to all 15 flashcards in this deck.
Unlock Deck
k this deck
10
When researchers in a clinical trial analyze outcomes for all study participants who were randomly assigned to a treatment group, regardless of whether they received the treatment or dropped out of the study, the analysis is called:

A) A complete case analysis
B) An intention to treat analysis
C) An available case analysis
D) None of the above
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Unlock for access to all 15 flashcards in this deck.
Unlock Deck
k this deck
11
Which approach would replace missing values based on using an equation such as the following: Missing Value = 10.0 + (2.5 * VAR1) + (1.8 * VAR2) + (3.0 * VAR3)?

A) Mean substitution
B) Conditional (subgroup) mean substitution
C) Regression imputation
D) Regression imputation with error
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12
Which of the following is not a type of single imputation?

A) Regression imputation
B) Stochastic regression imputation
C) Expectation-maximization imputation
D) They are all single imputation methods.
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Unlock for access to all 15 flashcards in this deck.
Unlock Deck
k this deck
13
In multiple imputation, m represents:

A) The number of variables being imputed
B) The number of predictors used in the imputation
C) The number of datasets that are created
D) The number of cases with missing values
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Unlock for access to all 15 flashcards in this deck.
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14
If VAR1 has 5% missing, VAR2 has 5% missing, and VAR3 has 10% missing, which of the following is true?

A) 90% of the participants have no missing values on VAR1 to VAR3
B) 85% of the participants have no missing values on VAR1 to VAR3
C) Between 80% and 90% of the participants have no missing values on VAR1 to VAR3
D) The amount of nonmissingness on VAR1 to VAR3 for participants cannot be determined.
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15
Which of the following strategies is advisable in addressing missing values problems?

A) Assume missing values are MCAR unless there is evidence to the contrary.
B) Undertake sensitivity analyses to see if substantive results are robust to different missing values strategies.
C) If the amount of missing values is less than 5%, ignore the problem.
D) None of the above
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