CS 446
Spring 2021 Part of Term 1
Jan 25-May 5
Credit: 3 OR 4 hours.
Principles and applications of machine learning. Main paradigms and techniques, including discriminative and generative methods, reinforcement learning: linear regression, logistic regression, support vector machines, deep nets, structured methods, dimensionality reduction, k-means, Gaussian mixtures, expectation maximization, Markov decision processes, and Q-learning. Application areas such as natural language and text understanding, speech recognition, computer vision, data mining, and adaptive computer systems, among others.
Same as ECE 449. 3 undergraduate hours. 3 or 4 graduate hours. Prerequisite: CS 225; One of MATH 225, MATH 415, MATH 416 or ASRM 406; One of CS 361, ECE 313, MATH 461 or STAT 400.
| CRN | Type | Section | Time | Day | Location | Instructor | Section Details | |
|---|---|---|---|---|---|---|---|---|
|
31421
|
Online
|
P3
|
3:30PM
-4:45PM
|
TR
|
n.a.
|
Telgarsky, M
|
|
|
|
39433
|
Online
|
P4
|
3:30PM
-4:45PM
|
TR
|
n.a.
|
Telgarsky, M
|
|
|
|
68039
|
Online Lecture
|
R3
|
3:30PM
-4:45PM
|
TR
|
n.a.
|
Schwing, A
|
|
|
|
68040
|
Online Lecture
|
R4
|
3:30PM
-4:45PM
|
TR
|
n.a.
|
Schwing, A
|
|