STAT 8260 Spring 2026
Theory of Linear Models
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eLearning Commons #
UGA’s eLearning Commons (eLC) is the university’s learning management system. All class communications, announcements, homework assignments, and other materials will be posted exclusively on eLC. Students are responsible to check eLC regularly for updates on course requirements and deadlines. This website is intended only as a supplementary resource.
Lecture time and location #
- Wednesday and Friday 1:15 PM - 2:35 PM
- Brooks Hall, Room 520
Teaching team and office hours #
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Instructor: Xiaotian Zheng
Office Hour: Friday 3:00 – 4:00 PM (or by appointment) at Brooks Hall 452
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Teaching Assistant: Fei Wen
Office Hours: Wednesday 4:00 - 5:00 PM
Lecture schedule #
The schedule will be updated as the course progresses.
PACQ = Plane Answers to Complex Questions (4th ed.)
[link]
LRA = Linear Regression Analysis (2nd ed.)
[link]
| Week | Date | Topic | Readings (optional) | |
|---|---|---|---|---|
| Lecture 1 | Week 1 | Jan. 14 | The ordinary least squares (OLS) formula | - |
| Lecture 2 | Week 1 | Jan. 16 | Vector space, rank, column space, and null space | PACQ App. A, B |
| Lecture 3 | Week 2 | Jan. 21 | The geometry of OLS and orthogonal projection I | - |
| Lecture 4 | Week 2 | Jan. 23 | The geometry of OLS and orthogonal projection II | |
| Lecture 5 | Week 3 | Jan. 28 | Consistency of the Normal Equations and generalized inverse | |
| Lecture 6 | Week 3 | Jan. 30 | Gram-Schmidt orthogonalization, QR decomposition, and computation of OLS | LRA Ch. 11.2, 11.3, 11.9 |
| Lecture 7 | Week 4 | Feb. 4 | Gauss-Markov models and Gauss-Markov Theorem | |
| Lecture 8 | Week 4 | Feb. 6 | Gaussian linear models I | |
| Lecture 9 | Week 5 | Feb. 11 | Gaussian linear models II | |
| Lecture 10 | Week 5 | Feb. 13 | Bayesian linear models |
Acknowledgements #
Course materials are based on Christensen (2011), Ding (2025), Gelman et al. (2013), Monahan (2008), Rencher and Schaalje (2008), Seber and Lee (2003), and Zimmerman (2020).
References #
Christensen, R. (2011). Plane Answers to Complex Questions: The Theory of Linear Models (4th ed.). New York, NY: Springer.
Ding, P. (2025). Linear Model and Extensions. Chapman & Hall.
Gelman, A., Stern, H. S., Carlin, J. B., Dunson, D. B., Vehtari, A., and Rubin, D. B. (2013). Bayesian Data Analysis (3rd ed). New York, NY: Chapman and Hall/CRC.
Monahan, J. F. (2008). A Primer on Linear Models. Boca Raton, FL: Chapman & Hall/CRC
Rencher, A. C. and Schaalje, G. B. (2008). Linear Models in Statistics. Hoboken, NJ: John Wiley & Sons.
Seber, G. A., and Lee, A. J. (2003). Linear Regression Analysis. Hoboken, NJ: John Wiley & Sons.
Zimmerman, D. L. (2020). Linear Model Theory with Examples and Exercises. Cham, Switzerland: Springer.