Latent variable models are used to explain relationships between observed variables and latent variables, which are not directly observed. They can be divided into two categories depending on whether the manifest and latent variables are categorical or continuous. Examples of latent variable models include the Rasch model, factor analysis, latent trait analysis, and latent profile analysis.
Princeton University
Spring 2019
This introductory course focuses on machine learning, probabilistic reasoning, and decision-making in uncertain environments. A blend of theory and practice, the course aims to answer how systems can learn from experience and manage real-world uncertainties.
No concepts data
+ 21 more concepts