STAT 339 - Probabilistic Modeling and Machine Learning
FCNSMAQFR4 credits An overview of statistical models and algorithms used in machine learning for classification, prediction, clustering, hidden variable modeling, and sequence learning. Fundamentals of probability, Bayesian inference and decision theory, model selection, and stochastic optimization. Modeling approaches include directed and undirected graphs, parametric, nonparametric and semi-parametric mixture models, Hidden Markov Models, and selected non-probabilistic techniques such as Support Vector Machines and Neural Networks. Emphasis throughout is on probabilistic reasoning from data. Applications selected from a variety of domains, based on student interest. Recommended Preparation: additional experience with linear algebra and/or probability.