The course focuses on statistical learning techniques, in particular those of supervised classification, both from statistical (logistic regression, discriminant analysis, nearest neighbours, and others) and machine learning background (tree-based methods, neural networks, support vector machines), with the emphasis on decision-theoretic underpinnings and other statistical aspects, flexible model building (regularization with penalties), and algorithmic solutions. Selected methods of unsupervised classification (clustering) and some related regression methods are covered as well. Prerequisite: Consent of the instructor.
Section | Capacity | Class times | Instructor(s) |
---|---|---|---|
LECTURE Q1
(15660) |
30 |
2024-01-08 - 2024-04-12 (MWF)
11:00 - 11:50
CAB 269
|
Primary Instructor: Wenlu Tang
|
Section | Capacity | Class times | Instructor(s) |
---|---|---|---|
LECTURE Q1
(74979) |
30 |
2025-01-06 - 2025-04-09 (MWF)
11:00 - 11:50
CAB 365
|
|