Logistic regression

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Logistic regression is a statistical regression model for binary dependent variables. It can be considered as a generalized linear model that utilizes the logit as its link function, and binomially distributed errors.

The model takes the following form:

The log of the odds (probability divided by one minus the probability) of the outcome is modelled as a linear function of the explanatory variables, X1 to Xk.

The interpretation of the parameter estimates is as an additive effect on the log of the odds. In the case of a dichotomous explanatory variable, for instance sex, (the antilog of ) is the estimate of the odds-ratio of having the outcome for, say, males compared with females.

Extensions of the model exist to cope with multi-category dependent variables and ordinal dependent variables.