MA 483 - Bayesian Data Analysis
- Credit Hours: 4R-0L-4C
- Term Available: W (Odd years)
- Graduate Studies Eligible: Yes
- Prerequisites: MA 381
- Corequisites: None
This course offers an introduction to statistical inference under the Bayesian framework in addition to elements of basic study design. Building from Bayes' Rule for probability computations, we develop a framework of estimation, hypothesis testing and prediction. Topics include the construction of prior distributions to quantify a priori beliefs about unknown parameters, modeling available data, and using data to update beliefs about parameters. Applications include inference for a single response, comparing groups, and regression models; modern applications will be covered, time permitting. The course will make use of heavy use of computational tools for Bayesian inference, including Markov Chain Monte Carlo (MCMC) methods.