CIS 490: Machine Learning - spring

Prereq: CIS 360; C or Better

General Education requirement: Natural Science Technology

Constructing computer programs that automatically improve with experience is the main task of machine learning. The key algorithms in the area are presented. Learning concepts as decision trees, artificial neural networks and Bayesian approach are discussed. The standard iterative dichotomizer (ID3) is presented, the issues of overfitting, attribute selection and handling missing data are discussed. Neural nets are discussed in detail, examples of supervised and unsupervised learning are presented. Instance-based learning, i.e. k-nearest neighbor learning, case-based reasoning are introduced. Genetic algorithms are discussed on introductory level.

Class#SctTypeSeatsUnits
11747 01 Lecture 50 3.00
Days Start End
MON TUE WED THU FRI SAT 2:00 PM EST 3:15 PM EST
Instructor: Ashokkumar Patel Class status:
Prereq: CIS 360; C or Better
Enrollment Section
Class instruction mode: In Person