MATH-356 Statistical Methods in Machine Learning

This course covers statistical methods in machine learning such as decision trees, random forests and support vector machines The course will use a project-based approach to give students hands-on experience using these techniques by analyzing large and complex real-world datasets. More importantly, they will learn the statistical principles behind these procedures, such as loss functions, maximum likelihood estimation and bias-variance trade-off as well as why these principles matter in real world settings.

Maximum Enrollment

Standard Course (40)

(Quantitative and Symbolic Reasoning.)

Credits

1

Prerequisite

MATH-254 or, with permission of the instructor, MATH-351 plus programming experience.