STAT8310 - Bayesian Data Analysis
Preface
Thank you
The course is finished (except of the final project). Thank you everyone for the participation and attention. Hope you all have learned something from this course, and have fun. Wish everyone has a good summer vacation! ππΌπ
Description
This course will cover the topics in the theory and practice of Bayesian statistical inference, ranging from a review of fundamentals to questions of current research interest. Motivation for the Bayesian approach. Bayesian computation, Monte Carlo methods, asymptotics. Model checking and comparison. A selection of examples and issues in modelling and data analysis. Discussion of advantages and difficulties of the Bayesian approach. This course will be computationally intensive through analysis of data sets using the R statistical computing language.
Prerequisites
MATH 4752/6752 β Mathematical Statistics II or equivalent, and the ability to program in a high-level language.
Instructor
Chi-Kuang Yeh, Assistant Professor in the Department of Mathematics and Statistics, Georgia State University.
- Office: Suite 1407, 25 Park Place.
- Email: cyeh@gsu.edu.
Office Hour
10:00β13:00 on Monday, or by appointment.
Grade Distribution
- Homework β 50%
- Exam β 30%
- Final β 20%
Assignment
Midterm
Final Project
More information can be found on the project page
Topics and Corresponding Lectures
Those chapters are based on the lecture notes. This part will be updated frequently.
| Status | Chapter | Topic | Lecture |
|---|---|---|---|
| β | Ch. 1 | Welcome and Overview | 1 |
| β | β | Intro to R Programming | 2 |
| β | Ch. 2 | Probability and Exchangeability | 3β5 |
| β | Ch. 3 | One Parameter Models | 6β9 |
| β | Ch. 4 | Monte Carlo | 10β 13 |
| β οΈ | Ch.5 | Gibbs Sampler | 14,17β18, 20 |
| β | Midterm Review | 15 | |
| β | Midterm Exam | 16 | |
| β± Spring Break π | |||
| β | - | Intro to JAGS and BUGS | 19 |
| β | Ch.6 | MCMC Diagnosis | 20-22 |
| β | Ch.7 | Multivariate Gaussian | 22β 26 |
| β | Ch. 8 | Select topic: Bayesian Machine Learning: | 27 |
| β | Ch. 9 | Select topic: Modern Bayesian Computation | 28 |
Recommended Textbooks
Gelman, A., Carlin, J., Stern, H., Rubin, D., Dunson, D., and Vehtari, A. (2021). Bayesian Data Analysis, CRC Press, 3rd Ed.
Hoff, P.D. (2009). A First Course in Bayesian Statistical Methods, Springer.
McElreath, R. (2018). Statistical Rethinking: A Bayesian Course with Examples in R and Stan, CRC Press.