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In: Statistics and Probability

1.When is logistic regression the appropriate model for modeling non-metric outcomes? 2.In what ways is logistic...

1.When is logistic regression the appropriate model for modeling non-metric outcomes?

2.In what ways is logistic regression comparable to multiple regression? How does it differ?

3.Why are there two forms of logistic coefficients (original and exponentiated)?

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