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For what type of dependent variable is logistic regression appropriate? Give an example of such a...

For what type of dependent variable is logistic regression appropriate? Give an example of such a variable. In what metric are logistic regression coefficients? What can we do to them to make them more interpretable, and how would we interpret the resulting translated coefficients?

(Understanding and Using Statistics for Criminology and Criminal Justice)

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