Announcements
- Link to Canvas course site TB Posted
- If you have asked for an add code: you have been already added to the waitlist. On 9/24, the waitlist became longer than the number of spaces in the class. On Monday 9/28, I will distribute add codes to the students who satisfy the prerequisites, giving priority to PhD students whose research is in Machine Learning. I would like to accept everyone, but we must keep in mind the workload of the TA, Zhaoqi Li, which will not be made easier by on-line teaching. So, I will try to accept up to 10 more students above the current capacity; if you do not get an email from my on Monday, look for updates here. Please also consider auditing!
- Another class I am teaching this quarter, with a fantastic team Statistics and Phylosophy of Voting"!
What will the course be about?
The class will teach the basic principles of Machine Learning, and in particular will highlight the intimate connection between statistics and computation (meaning algorithms, data structures, and optimization) in modeling large or high-dimensional data. Solutions that are algorithmically elegant, often end up being also statistically sound, and sometimes when the model estimation program runs fast, we find that the model fits the data well.
These principles will be illustrated during the study of a variety of
models, problems and methods. See also the syllabus (TB UPDATED).
Who is this class for? This class is a core class in the Machine Learning/Big Data PhD Track in Statistics. For any Statistics PhD student who wants to learn Machine Learning/Big Data, this class is the fist in the triplet of graduate courses 535 --> 538/548 and serves as a prerequisite to
STAT 538 Advanced Machine Learning (taught in Winter), and
STAT 548/CSE 547 Machine Learning for Big Data (Spring)
For the Statistics MS Students in the Statistical Learning Track, this class is the third in the sequence 534,527,535 that leads to completion of this certificate.
Capacity permitting, the class is open to other graduate students with
an interest in statistics, algorithms and computing, in particular to
students involved in Machine Learning research across campus.
Optional Textbooks are listed here
Prerequisites
Instructor: Marina Meila
mmp at stat dot washington dot edu
Lectures: Tuesdays,12:30 - 1:50, & Thursdays 12:30-1:50 in on-line
Office hours: TBA
Course home page: http://www.stat.washington.edu/courses/stat535/fall20 (this page)
Class mailing list: stat535a_au20 at UW
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