Deck 11: Logistic Regression

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Logistic regression is basically an extension of multiple regression in situations where the DV is not a continuous or quantitative variable.
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Logistic regression is also sometimes used as an alternative to discriminant analysis.
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The value that is being predicted in logistic regression is a probability, which ranges from 0 to 1.
Question
Like both discriminant analysis and multiple regression, logistic regression requires that assumptions about the distributions of the predictor variables need to be made by the researcher.
Question
Logistic regression is unable to produce nonlinear models.
Question
The chi-square goodness-of-fit test compares the actual values for cases on the DV with the predicted values on the DV.
Question
Smaller values on the -2 Log Likelihood indicate that the model fits the data better.
Question
Cox & Snell R Square and Nagelkerke R Square are essentially estimates of R² indicating the proportion of variability in the DV that may be accounted for by all predictor variables included in the equation.
Question
The classification table compares the predicted values for the IVs, based on the logistic regression model, with the actual observed values from the data.
Question
The significance of each predictor is tested with a t test as in multiple regression.
Question
The odds ratio represents the increase (or decrease if Exp(B) is less than 1) in odds of being classified in a category when the predictor variable increases by 1.
Question
Even though logistic regression does not require the adherence to any assumptions about the distribution of predictor variables, several problems may occur if too few cases relative to the number of predictor variables exist in the data.
Question
Logistic regression may produce extremely large parameter estimates and standard errors, especially in situations where combinations of discrete variables result in too many cells with no cases.
Question
Logistic regression is not sensitive to high correlations among predictor variables.
Question
Logistic regression is also not sensitive to outliers.
Question
Probabilities are simply the number of outcomes of a specific type expressed as a proportion of the total number of possible outcomes.
Question
In a logistic regression application, odds are defined as the ratio of the probability that an event will occur divided by the probability that the event will not occur.
Question
Probabilities will always have values that range from 0 to 1, but odds may be greater than 1.
Question
The ultimate model obtained by a logistic regression analysis is a linear function.
Question
Wald is a measure of association for B and represents the significance of a variable in its ability to contribute to the model.
Question
The results summary should always describe how variables have been transformed or deleted.
Question
The accuracy of classification should also be reported in the narrative.
Question
The results section in logistic regression should contain a table that includes B, Wald, df, level of significance, and odds ratio.
Question
In binary logistic regression, the DV may be dichotomous and the IVs may be continuous or categorical.
Question
A good-fitting model in logistic regression will typically have fairly low values for -2 Log Likelihood, significant model chi-square, and variables with odds ratios greater than or equal to 1.
Question
Which of the following responses is not true of logistic regression?

A) It is basically an extension of multiple regression in situations where the DV is not a continuous or quantitative variable.
B) Like both multiple regression and discriminant analysis, logistic regression requires the same assumptions about the distributions of the predictor variables (IVs) to be made by the researcher.
C) This procedure is also sometimes used as an alternative to discriminant analysis.
D) The basic concepts that are fundamental to multiple regression analysis-namely that several variables are regressed onto another variable using one of several selection processes-are the same for logistic regression analysis, although the meaning of the resultant regression equation is considerably different.
Question
The main output components to interpret in the results obtained from a logistic regression analysis include which of the following?

A) The resulting model, using goodness-of-fit tests.
B) A classification table for the DV.
C) The table of coefficients for variables included in the model.
D) Responses (a), (b), and (c) are correct.
Question
Mathematically speaking, logistic regression is based on:

A) Probabilities.
B) Odds.
C) The logarithm of the odds.
D) All three above responses are correct.
Question
Which of the following statements is incorrect?

A) Probabilities are simply the number of outcomes of a specific type expressed as a proportion of the total number of possible outcomes.
B) Odds are defined as the ratio of the probability that an event will occur divided by the probability that the event will not occur.
C) Odds will always have values that range from 0 to 1.
D) The odds ratio is defined as a ratio of the odds of being classified in one category of the DV for two different values of the IV.
Question
Which of the following is true in the interpretation of results?

A) Cox & Snell R Square and Nagelkerke R Square represent two different estimates of the amount of variance in the DV accounted for by the overall model.
B) Chi-square statistics with levels of significance are computed for the model, block, and step.
C) Wald is a measure of significance for B and represents the significance of each variable in its ability to contribute to the model.
D) All of the above are true.
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Deck 11: Logistic Regression
1
Logistic regression is basically an extension of multiple regression in situations where the DV is not a continuous or quantitative variable.
True
2
Logistic regression is also sometimes used as an alternative to discriminant analysis.
True
3
The value that is being predicted in logistic regression is a probability, which ranges from 0 to 1.
True
4
Like both discriminant analysis and multiple regression, logistic regression requires that assumptions about the distributions of the predictor variables need to be made by the researcher.
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5
Logistic regression is unable to produce nonlinear models.
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6
The chi-square goodness-of-fit test compares the actual values for cases on the DV with the predicted values on the DV.
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7
Smaller values on the -2 Log Likelihood indicate that the model fits the data better.
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8
Cox & Snell R Square and Nagelkerke R Square are essentially estimates of R² indicating the proportion of variability in the DV that may be accounted for by all predictor variables included in the equation.
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9
The classification table compares the predicted values for the IVs, based on the logistic regression model, with the actual observed values from the data.
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10
The significance of each predictor is tested with a t test as in multiple regression.
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11
The odds ratio represents the increase (or decrease if Exp(B) is less than 1) in odds of being classified in a category when the predictor variable increases by 1.
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12
Even though logistic regression does not require the adherence to any assumptions about the distribution of predictor variables, several problems may occur if too few cases relative to the number of predictor variables exist in the data.
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13
Logistic regression may produce extremely large parameter estimates and standard errors, especially in situations where combinations of discrete variables result in too many cells with no cases.
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14
Logistic regression is not sensitive to high correlations among predictor variables.
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15
Logistic regression is also not sensitive to outliers.
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16
Probabilities are simply the number of outcomes of a specific type expressed as a proportion of the total number of possible outcomes.
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17
In a logistic regression application, odds are defined as the ratio of the probability that an event will occur divided by the probability that the event will not occur.
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18
Probabilities will always have values that range from 0 to 1, but odds may be greater than 1.
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19
The ultimate model obtained by a logistic regression analysis is a linear function.
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20
Wald is a measure of association for B and represents the significance of a variable in its ability to contribute to the model.
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21
The results summary should always describe how variables have been transformed or deleted.
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22
The accuracy of classification should also be reported in the narrative.
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23
The results section in logistic regression should contain a table that includes B, Wald, df, level of significance, and odds ratio.
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24
In binary logistic regression, the DV may be dichotomous and the IVs may be continuous or categorical.
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25
A good-fitting model in logistic regression will typically have fairly low values for -2 Log Likelihood, significant model chi-square, and variables with odds ratios greater than or equal to 1.
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26
Which of the following responses is not true of logistic regression?

A) It is basically an extension of multiple regression in situations where the DV is not a continuous or quantitative variable.
B) Like both multiple regression and discriminant analysis, logistic regression requires the same assumptions about the distributions of the predictor variables (IVs) to be made by the researcher.
C) This procedure is also sometimes used as an alternative to discriminant analysis.
D) The basic concepts that are fundamental to multiple regression analysis-namely that several variables are regressed onto another variable using one of several selection processes-are the same for logistic regression analysis, although the meaning of the resultant regression equation is considerably different.
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k this deck
27
The main output components to interpret in the results obtained from a logistic regression analysis include which of the following?

A) The resulting model, using goodness-of-fit tests.
B) A classification table for the DV.
C) The table of coefficients for variables included in the model.
D) Responses (a), (b), and (c) are correct.
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Unlock for access to all 30 flashcards in this deck.
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28
Mathematically speaking, logistic regression is based on:

A) Probabilities.
B) Odds.
C) The logarithm of the odds.
D) All three above responses are correct.
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k this deck
29
Which of the following statements is incorrect?

A) Probabilities are simply the number of outcomes of a specific type expressed as a proportion of the total number of possible outcomes.
B) Odds are defined as the ratio of the probability that an event will occur divided by the probability that the event will not occur.
C) Odds will always have values that range from 0 to 1.
D) The odds ratio is defined as a ratio of the odds of being classified in one category of the DV for two different values of the IV.
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k this deck
30
Which of the following is true in the interpretation of results?

A) Cox & Snell R Square and Nagelkerke R Square represent two different estimates of the amount of variance in the DV accounted for by the overall model.
B) Chi-square statistics with levels of significance are computed for the model, block, and step.
C) Wald is a measure of significance for B and represents the significance of each variable in its ability to contribute to the model.
D) All of the above are true.
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