MATH4230 - Optimization Theory - 2022/23
Announcement
- The Midterm Exam of Math4230 will be held at Mong Man Wai Bldg 702 on March, 21, 2023, 14:30 pm-15:50 pm. Section 2.1 and Section 2.2 in Notes 1 will be examined.
General Information
Lecturer
-
Zeng Tieyong
- Office: LSB 225
- Tel: (852) 3943-7966
- Email:
Teaching Assistant
-
Zeyu Li
- Office: LSB 222A
- Tel: 3943 3575
- Email:
Time and Venue
- Lecture: Tu 14:30 - 16:15 ( Mong Man Wai Bldg 702); We 13:30 - 14:15 (William M W Mong Eng Bldg 404)
- Tutorial: We 12:30 - 13:15 (William M W Mong Eng Bldg 404)
Course Description
Unconstrained and equality optimization models, constrained problems, optimality conditions for constrained extrema, convex sets and functions, duality in nonlinear convex programming, descent methods, conjugate direction methods and quasi-Newton methods. Students taking this course are expected to have knowledge in advanced calculus.
Textbooks
- G. Lan, First-order and Stochastic Optimization Methods for Machine Learning, Spriner 2020.
- D. Michael Patriksson, An Introduction to Continuous Optimization: Foundations and Fundamental Algorithms, Third Edition (Dover Books on Mathematics), 2020
- D. Bertsekas, Convex Optimization Theory, Athena Scientific, 2009.
- Boris S. Mordukhovich, Nguyen Mau Nam An Easy Path to Convex Analysis and Applications, 2013.
References
- S. Boyd and L. Vandenberghe, Convex Optimization, Cambridge University Press, 2004.
- D. Bertsekas, A. Nedic, A. Ozdaglar, Convex Analysis and Optimization, Athena Scientific, 2003.
- D. Bertsekas, Convex Optimization Algorithms, Athena Scientific, 2015.
Lecture Notes
Class Notes
- Introduction to optimization (Jan 10, 2023)
- Mathematical review (Jan 11, 2023)
- Convex function (Feb 14, 2023)
- Subgradient (Feb 28, 2023)
Tutorial Notes
Assignments
Solutions
Assessment Scheme
Tutorial attendance & good efforts or top 15% in both the mid- and final exams (tutorial assignments are counted only if they are submitted before 6:30pm Monday next after the tutorial class) | 10% | |
Mid-Exam | 17.5% | |
Mini-Project | 17.5% | |
Final-Exam | 55% |
Useful Links
- Convex Optimization 2008 of illinois
- Convex Optimization (Book Stanford)
- Convex Optimization(Georgia Tech 2022)
- CONVEX ANALYSIS: An introduction to convexity and nonsmooth analysis
- An Easy Path to Convex Analysis and Applications
- Convex analysis (Ecole Polytechnique)
Honesty in Academic Work
The Chinese University of Hong Kong places very high importance on honesty in academic work submitted by students, and adopts a policy of zero tolerance on cheating and plagiarism. Any related offence will lead to disciplinary action including termination of studies at the University. Although cases of cheating or plagiarism are rare at the University, everyone should make himself / herself familiar with the content of the following website:
http://www.cuhk.edu.hk/policy/academichonesty/and thereby help avoid any practice that would not be acceptable.
Assessment Policy Last updated: March 02, 2023 00:03:55