CS4315 Introduction to Machine Learning and Data Mining
A survey of methods by which software and hardware can improve their performance over time. Topics include data manipulation, concept learning, association rules, decision trees, Bayesian models, simple linear models, case-based reasoning, genetic algorithms, and finite-state sequence learning. Students will do projects with software tools. Prerequisites: One college-level course in programming.
Prerequisite
CY3650 and one college-level course in programming
Lecture Hours
3
Lab Hours
1