| |
Feb 06, 2026
|
|
|
|
|
EE 258 - Neural Networks 3 unit(s) Fundamentals and applications of neural networks and learning processes. Course covers models of a neuron, perceptrons, Linear Mean Square (LMS) algorithm, multilayer perceptrons, back propagation algorithm, and radial basis function networks. Deep feedforward networks, regularization for deep learning, and optimization for deep models. Convolutional neural networks. Recurrent and recursive networks.
Prerequisite(s): Graduate standing or instructor consent. Grading: Letter Graded
Class Schedule | Syllabus Information | University Bookstore
Add to Favorites (opens a new window)
|
|