An Introductory Course On Learning Systems in The Context Of Signal Processing, Artificial Intelligence and Control. Problems of Classification, Regression and Clustering. Neural Networks# Multi-level Perceptrons and Radial Basis Functions. Decision Trees. Elements of The Learning Theory# The Bayesian Approach, Hypothesis Spaces. Dimensionality Reduction Using Principal Components. Classification Using Support Vector Machines. Reinforcement Learning.

Faculty: Electrical and Computer Engineering
|Undergraduate Studies |Graduate Studies

Pre-required courses

(44130 - Signals and Systems and 104034 - Introduction to Probability H) or (44131 - Signals and Systems and 104034 - Introduction to Probability H)


Course with no extra credit

36049 - Neural Networks For Control/diagnostic 236756 - Introduction to Machine Learning


Course with no extra credit (contained)

236766 - Introduction to Machine Lerning


Semestrial Information