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Jack Baskin School of EngineeringUC Santa Cruz

CMPS 242


Introduction to machine learning algorithms. Covers learning models
from fields of statistical decision theory and pattern recognition,
artificial intelligence, and theoretical computer science. Topics
include classification learning and the Probably Approximately Correct
(PAC) learning framework, density estimation and Bayesian learning, EM,
regression, and online learning. Provides an introduction to standard
learning methods such as neural networks, decision trees, boosting,
nearest neighbor, and support vector machines. Requirements include one
major experimental learning project or theoretical paper. Enrollment
restricted to graduate students. Enrollment limited to 30. M. Warmuth,
D. Helmbold

(sourced from /cse/classes/cmps242/description.txt)