|
Nov 23, 2024
|
|
|
|
MATH 243 - Statistical Learning An overview of modern approaches to analyzing large and complex data sets that arise in a variety of fields from biology to marketing to astrophysics. The most important modeling and predictive techniques will be covered, including regression, classification, clustering, resampling, and tree-based methods. There will be several projects throughout the course, which will require significant programming in R.
Unit(s): 1 Group Distribution Requirement(s): Distribution Group III Prerequisite(s): MATH 141 or experience with linear regressions and programming with instructor approval Instructional Method: Lecture-conference Grading Mode: Letter grading (A-F) Group Distribution Learning Outcome(s):
- Use and evaluate quantitative data or modeling, or use logical/mathematical reasoning to evaluate, test or prove statements.
- Given a problem or question, formulate a hypothesis or conjecture, and design an experiment, collect data, or use mathematical reasoning to test or validate it.
Add to Portfolio (opens a new window)
|
|