<aside> 🚧

Under construction

</aside>

Logistics

Semester Spring 2026
Time & Days TuTh 10:30AM - 11:45AM
Location TBD
Instructor Kihyuk Hong (E2-2 #3104)
Office Hours TBD
Email [email protected]
TAs TBD
Lecture Note To be provided
Midterm TBD
Final TBD

Course Description

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.

Course Schedule

<aside> ⚠️

Subject to change.

</aside>

No. Date Lecture Notes 📹 Readings Exercise Homework
01 Lecture 01: Introduction 1 - Regression model examples. Notations.
02 Lecture 02: Introduction 2 - Prerequisites. Linear Algebra. Normal Distributions.
03 Lecture 03: Linear Model 1 - Least squares. Gauss-Markov theorem.
04 Lecture 04: Linear Model 2 -
05
06
07
08
09
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25