CS 229 Machine Learning

Prerequisites: linear algebra and basic probability and statistics. Familiarity with artificial intelligence recommended. Topics: linear and non-linear regression, nonparametric methods, Bayesian methods, support vector machines, kernel methods, Artificial Neural Networks, model selection, learning theory, VC dimension, clustering, EM, dimensionality reduction, PCA, SVD and reinforcement learning.

Credits

3