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Southern New Hampshire University Course Info

Manchester, New Hampshire

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Course Info

Search for courses by clicking on letters of the alphabet or by using a search bar. Explore course description, number of credits required and course sequences to satisfy graduation requirements.


MAT 434

Statistical Learning and Classification

Using the foundational knowledge built in MAT 241 and MAT 300, we continue our study of statistical models. This course moves beyond regression and into classification models, mixed models, and unsupervised learning. This course also emphasizes cross-validation as an important method for approximating test error and analyzing the utility of a model. This course covers discriminant analysis, k nearest neighbors, tree-based methods (bagging, boosting, and random forests), support vector machines, and neural networks.

Units: 3.0

Prerequisites:
MAT 300 - Applied Statistics II: Regression Analysis
Min Grade: C