Session 3: Modelling Binary and Categorical Outcomes

Published

30 04 2026

Modified

07 03 2026

Note

Date: Thursday, 30 April 2026, 16:00–19:00

Business question

Can we predict which firms are likely to exit the market in the next year?

Learning goals

  • Understand when and why OLS breaks down for binary outcomes
  • Run and interpret logistic regression with glm()
  • Translate log-odds into meaningful business insights (predicted probabilities, marginal effects)

Dataset

bisnode-firms — ~17,500 Hungarian firms in manufacturing and services (Békés & Kézdi 2021). Key variables: firm exit (binary), log sales, log employees, profit margin, firm age, liquidity, ownership structure.

Session outline

Time Activity
16:00–16:30 Debrief: Take-home Task 2
16:30–17:10 Input: why OLS fails for binary outcomes; logistic regression intuition
17:10–17:20 Break
17:20–18:05 Live demo
18:05–18:45 In-session exercise
18:45–19:00 Debrief + Quarto skill: inline R code

Materials

File Description
Slides Lecture slides — open in browser, press F for fullscreen
Lecture notes & demo Live coding document built during the session
Exercise sheet In-session exercise — predicting firm exit with logistic regression
Session outline Detailed session plan with timing and teaching notes