CourseDelta for Yorku

Suggest an Edit for GS/EECS 6127 (3.00)

GS/EECS 6127 (3.00)
Machine Learning Theory
Description
This course takes a foundational perspective on machine learning and covers some of its underlying mathematical principles. Topics range from well-established results in learning theory to current research challenges. We start with introducing a formal framework, and then introduce and analyze learning methods, such as Nearest Neighbors, Boosting, Support Vector Machines (SVMs) and Neural Networks. Finally, students present and discuss recent research papers.

Tips: you can drag and drop the boxes to clone them to different sections or groups within a prerequisite equation.
Prerequisite Equation
Edit the prerequisite equation to this course:
note: adding data in this section will override data in the Prerequisite List.
+ add prereq equation
Prerequisite List (Overridden by Prerequisite Equation)
Edit the list of prerequisites to this course:
note: data in this section will be override by the Prerequisite Equation if it exists.
+ add new course
Exclusion List
Edit the list of course cerdit exclusions to this course:
+ add new course
Your name (optional):

Any additional comment (optional):




Project of SSADC @ York
Made by PresidentKevvol/@Deep fried pancakes et. al.
To report a problem/mistake, email to ssadc.atyork@gmail.com
© 2021 - 2024