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Under construction
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| Semester | Spring 2026 |
|---|---|
| Time & Days | MW 10:30AM - 11:45AM |
| Location | E2-2 1122 |
| Instructor | Kihyuk Hong (E2-2 #3104) |
| Office Hours | TBD |
| [email protected] | |
| TAs | TBD |
| Midterm | TBD |
| Final | TBD |
This course reviews general theories of linear regression models with applications to industrial engineering problems. Topics include: Principles of least squares method; multivariate normal distribution and quadratic forms; estimation and hypothesis testing; residual analysis; polynomial regression and ridge regression; regression model building; response surface methodology, etc. Computational aspects of regression analysis are also emphasized.
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This course is proof-based and requires a strong level of mathematical maturity. Students without sufficient background may find it challenging to follow the material. In particular, prior knowledge of linear algebra and probability/statistics is essential. If you choose to take the course without this background, you will be expected to independently study the necessary material in order to keep up with the lectures.
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| Components | Note | % |
|---|---|---|
| Participation | Scribing lecture notes | 10% |
| Homework | Proof-based problems and some coding-based problems. | 15% |
| Data Project | Implement regression methods learned in lecture and submit solutions in kaggle environments | 15% |
| Midterm Exam | In-class | 30% |
| Final Exam | In-class | 30% |
There are no required textbooks for this course. Some useful resources: