This document provides an overview of discrete choice models and conjoint analysis. It discusses:
- The differences between stated preference surveys and revealed preference data in choice modeling.
- How discrete choice models use logit and probit links to transform categorical dependent variables into continuous latent variables for regression analysis.
- Applications of discrete choice models like logistic regression, logit models, ordered models, and multinomial models.
- How conjoint analysis is used to study consumer preferences for product attributes through experimental designs and choice-based surveys. It decomposes overall choices to infer part-worth utilities of individual attributes.