CSCI-B 555 MACHINE LEARNING (3 CR.)
Theory and practice of constructing algorithms that learn functions and choose optimal decisions from data and knowledge. Topics include: mathematical/probabilistic foundations, MAP classification/regression, linear and logistic regression, neural networks, support vector machines, Bayesian networks, tree models, committee machines, kernel functions, EM, density estimation, accuracy estimation, normalization, model selection.
1 classes found
Fall 2024
Component | Credits | Class | Status | Time | Day | Facility | Instructor |
---|---|---|---|---|---|---|---|
LEC | 3 | 6844 | Open | 4:45 p.m.–6:00 p.m. | MW | BH 110 | Khardon R |
Regular Academic Session / In Person
LEC 6844: Total Seats: 120 / Available: 91 / Waitlisted: 0
Lecture (LEC)