Mixture models: summarySummarizes mixtures of logit models, covering various mixing methods and modeling techniques for taste heterogeneity.
Bayesian Estimation: Overview and ExamplesIntroduces Bayesian estimation, covering classical versus Bayesian inference, conjugate priors, MCMC methods, and practical examples like temperature estimation and choice modeling.
Supervised Learning EssentialsIntroduces the basics of supervised learning, focusing on logistic regression, linear classification, and likelihood maximization.
Binary Choice ModelCovers the binary choice model, error term assumptions, specific constants, invariances, and distribution properties.
Probability and StatisticsDelves into probability, statistics, paradoxes, and random variables, showcasing their real-world applications and properties.
Continuous Random VariablesCovers continuous random variables, probability density functions, and distributions, with practical examples.