Class time: Tuesday and Thursday, 12:45 PM - 2:05 PM
Classroom: Carmen Zoom
Course website: https://sites.google.com/view/osu-cse-5523-sp21-chao
Instructor: Prof. Wei-Lun (Harry) Chao
Email: chao.209@osu.edu
Office hour: TBD
TA: Tai-Yu Pan
Email: pan.667@osu.edu
Office hour: TBD
Course abstract: Introduction to basic concepts of machine learning and statistical pattern recognition; techniques for classification, clustering, and data representation and their theoretical analysis.
Course credits: 3 units
Pre-requisites:
Required background:
§ Linear algebra: Math 2568, 2174, 4568, or 5520H
§ Artificial intelligence: 3521, 5521, or 5243
§ Statistics and probability: 5522, Stat 3460, or 3470
Students in the class are expected to have a decent degree of mathematical sophistication and to be familiar with linear algebra, multivariate calculus, probability, and statistics. Students are also expected to have knowledge of algorithm design and data structures.
Programming in Python 3 is required.
Review materials can be found: linear algebra, probability, Python-1, Python-2, Python-3
Required Textbook: No required textbook
Suggested references:
Christopher M Bishop, Pattern recognition and machine learning. Springer, 2006.
Shai Shalev-Shwartz and Shai Ben-David, Understanding machine learning: From theory to algorithms. Cambridge university press, 2014.
Kevin P. Murphy, Machine Learning: A Probabilistic Perspective. The MIT press, 2012
Ian Goodfellow, Yoshua Bengio, and Aaron Courville, Deep learning. The MIT press, 2016.
Other suggested reference:
Sergios Theodoridis, Machine Learning: A Bayesian and Optimization Perspective. Academic Press, 2016/2020.
Mehryar Mohri, Afshin Rostamizadeh, and Ameet Talwalkar, Foundations of Machine Learning, The MIT press, 2012/2018
Yaser S. Abu-Mostafa, Malik Magdon-Ismail, Hsuan-Tien Lin, Learning from Data, AMLBook, 2012.
Ethem Alpaydin, Introduction to Machine Learning. The MIT press.
Useful reference:
Kaare Brandt Petersen and Michael Syskind Pedersen, The Matrix Cookbook
Grading (tentative):
Homework: 50%
Midterm exam: 25%
Final exam (4/27, ET): 25%
Homework: There will be 4-5 homework assignments. Each assignment will include a problem set and a programming set. Programming in Python is required. Carmen (and other platforms like GitHub or Google Colab) will be used for submission. For the problem set and report of the programming set, we may only allow pdf submission with your answers typed in LaTeX. You must strictly follow the homework and submission instructions.
Midterm exam & final exam: We will use Proctorio or Carmen quizzes or Carmen Zoom.
About on-line lectures using Carmen Zoom:
Please use your full name (e.g., Wei-Lun Chao).
Please update your photo in Carmen Zoom.
Upon joining the meeting, please mute yourself.
You are encouraged to ask questions during the lecture by raising your hand (in participation) or typing questions (in chats). I will then ask you to unmute yourself to speak.
We will record the lectures. The videos will be shared with you after the lectures.
We recommend that you use cameras, especially during the office hours.
Announcements, communications, and discussions:
We will make normal announcements using Carmen website or Piazza. Announcements of urgent matters will be mailed to your name.#@osu.edu address. If you do not regularly read that account, make sure you forward it to somewhere that does.
We will use Piazza for discussions. If you have questions about the course materials or policy, please also post them on Piazza. The TA and I will also monitor these discussions and answer as appropriate, but students should feel free to use the forums to have group discussions as well.
Please only use email to contact the instructor or the TA for urgent or personal issues. Any e-mails sent to the instructor or TA should include the tag "[OSU-CSE-5523]" in the subject line. (This ensures we can filter and prioritize your messages.) We reserve the right to forward any questions (and their answers) to the entire class, if they should prove relevant. Please indicate if you wish to be anonymized (i.e. have your name removed) in this case.
Homework:
There are NO late days for homework assignments.
Homework should be neat and professional and follow the required format. In particular, homework on torn sheets, scrap paper, or not well scanned into a single file will not be accepted.
Homework is to be done individually. Of course, the discussion between students is allowed and encouraged, but the actual homework should be completed separately. You have to list with whom you discussed.
Questions about homework or exams should be made in a timely fashion. Any complaints about homework grading must be made within 1-week of when the item is returned or before 4/29/2021 (whichever comes first). Do not wait until the end of the semester!
Exam:
Excuse from scheduled exams can be accepted only in case of personal sickness requiring medical care or severe accidents in the immediate family (documentation required).