Relevance of Course Objectives and Core Learning Outcomes(%) |
Teaching and Assessment Methods for Course Objectives |
Course Objectives |
Competency Indicators |
Ratio(%) |
Teaching Methods |
Assessment Methods |
To give a comprehensive introduction on structural equation model, including (1) model specification, (ii) parametric estimation algorithms and (iii) validation techniques. |
|
|
topic Discussion/Production |
Exercises |
Discussion |
Lecturing |
|
Written Presentation |
Oral Presentation |
Assignment |
Study Outcome |
Quiz |
Internship |
Other |
|
Course Content and Homework/Schedule/Tests Schedule |
Week |
Course Content |
Week 1 |
Course introduction. |
Week 2 |
Structural equation models. |
Week 3 |
Structural equation models. |
Week 4 |
Compared with discrete time state-space model. |
Week 5 |
Parametric estimation. |
Week 6 |
Parametric estimation. |
Week 7 |
Optimization techniques. |
Week 8 |
Optimization techniques. |
Week 9 |
Mid-Term examination. |
Week 10 |
EM algorithm. |
Week 11 |
Predictive inference. |
Week 12 |
Predictive inference |
Week 13 |
Model assessment. |
Week 14 |
Model assessment. |
Week 15 |
Advanced topics. |
Week 16 |
Advanced topics. |
Week 17 |
Project presentation. |
Week 18 |
Final examination. |
|
Evaluation |
Assignment (Mathematical Proof): 20%
Assignment (Program Implementation): 20%
Seminar on Matlab, Python, or other languages: 10%
Project: 50% |
Textbook & other References |
John Sum, Tutorial on Structural Equation Modeling, unpublished manuscript, December 2019. |
Teaching Aids & Teacher's Website |
NA |
Office Hours |
Tuesday 13:00-14:00 |
Sustainable Development Goals, SDGs |
  | include experience courses:N |
|