This document provides an overview of multiple logistic regression. It discusses key concepts like proportions, probabilities, odds, odds ratios, and logits. It explains how logistic regression can be used to model relationships between a binary outcome variable and multiple explanatory variables. A worked example uses student data to demonstrate how logistic regression models the log odds of a student aspiring to continue their education based on their gender. Key outputs like regression coefficients, odds ratios, and predicted probabilities are interpreted.