CS4232 — Machine Learning & Data Mining
Introduction to primary approaches to machine learning and data mining. Methods selected from decision trees, neural networks, statistical learning, genetic algorithms, support vector machines, ensemble methods, and reinforcement learning. Theoretical concepts associated with learning, such as inductive bias and Occam's razor. This is a potential Master's project course. prereq: (CS 1632 or 2511), (CS 2531 or MATH 3355), (STAT 3611 or 3411), (MATH 3280 or 3326) or instructor consent; a grade of C- or better is required in all prerequisite courses; no grad credit