|
Dec 03, 2024
|
|
|
|
USC Catalogue 2021-2022 [ARCHIVED CATALOGUE]
|
EE 660 Machine Learning II: Mathematical Foundations and Methods Units: 4 Terms Offered: Fa Supervised, semi-supervised, and unsupervised machine learning; domain adaptation and transfer learning. Feasibility of learning, model complexity, and performance (error) on unseen data. Prerequisite: EE 503 and EE 510 and EE 559 Recommended Preparation: Experience with Python at the level of EE 541 . Familiarity with general machine learning methods including regression and classification and with computational complexity at the level of EE 538 Instruction Mode: Lecture, Discussion Grading Option: Letter
|
|
You must be logged in to post a comment.