Logistic Regression Flashcards
What is the key difference between linear regression and logistic regression?
Multiple linear regression evaluates predictors of continuously distributed outcomes while multiple logistic regression evaluates predictors of dichotomous outcomes, i.e. outcomes that either occurred or did not.
Why do you take the log odds of a logistic regression analysis?
When you take a dichotomous outcome that either occurred or did not occur and express it as odds, i.e. as a continuously distributed outcome, you tend to get a curvilinear relationship. Taking the log(odds) will make the relationship fairly linear. You must exponentiate final odds ration to get the final result.
Odds of an outcome occurring in logistic regression
log[P/(1-P)]
In logistic regression, what kinds of predictor variables can you have?
Independent predictor variables can be a mix of continuous, dichotomous, or dummy variables (ordinal or categorical).