Fall 2025 Statistics GR5244 section 001

Unsupervised Learning

Call Number 17042
Day & Time
Location
W 8:40am-11:25am
To be announced
Points 2-6
Grading Mode Standard
Approvals Required None
Instructor Genevera Allen
Type RESEARCH SEM
Method of Instruction In-Person
Course Description

Description. Unsupervised Learning is a masters level course on foundations, methods, practice, and applications in machine learning from data without associated labels or outcomes.  This course will focus on dimension reduction and clustering techniques while also covering graphical models, missing data imputation, anomaly detection, generative models, and others. The course will also emphasize conceptual understanding and practical applications of unsupervised learning in data visualization, exploratory data analysis, data pre-processing, and data-driven discovery.   

 

Prerequisites.

STAT GR 5206 Statistical Computing and Intro to Data Science

STAT GR 5241 Statistical Machine Learning (strongly recommended)

STAT GR 5205 Linear Regression (recommended)

STAT GR 5203 Probability (recommended)

Students should also be familiar with linear algebra.

Web Site Vergil
Department Statistics
Enrollment 0 students (50 max) as of 5:06PM Sunday, June 29, 2025
Subject Statistics
Number GR5244
Section 001
Division Interfaculty
Open To GSAS
Section key 20253STAT5244G001