Fall 2023 Electrical Engineering and Computer Science E6720 section 001

BAYESIAN MOD MACHINE LEARNING

BAYESIAN MOD MACHINE LEAR

Call Number 11997
Day & Time
Location
R 1:10pm-3:40pm
833 Seeley W. Mudd Building
Points 3
Grading Mode Standard
Approvals Required None
Instructor John W Paisley
Type LECTURE
Method of Instruction In-Person
Course Description

Basic statistics and machine learning strongly recommended. Bayesian approaches to machine learning. Topics include mixed-membership models, latent factor models, Bayesian nonparametric methods, probit classification, hidden Markov models, Gaussian mixture models, model learning with mean-field variational inference, scalable inference for Big Data. Applications include image processing, topic modeling, collaborative filtering and recommendation systems.

Web Site Vergil
Department Electrical Engineering
Enrollment 45 students (120 max) as of 1:06PM Saturday, May 10, 2025
Subject Electrical Engineering and Computer Science
Number E6720
Section 001
Division School of Engineering and Applied Science: Graduate
Open To Engineering:Undergraduate, Engineering:Graduate, GSAS
Section key 20233EECS6720E001