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PSTAT231

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PSTAT 231 - Introduction to Statistical Machine Learning

Statistics & Applied Probability College of Letters and Science

Full Course Title

Introduction to Statistical Machine Learning

Instructor Name(s)

STAFF

Course Description

Statistical Machine Learning is used to discover patterns and relationships in large data sets. Topics will include: data exploration, classification and regression trees, random forests, clustering and association rules. Building predictive models focusing on model selection, model comparison and performance evaluation. Emphasis will be on concepts, methods and data analysis; and students are expected to complete a significant class project, individual or team based, using real world data.

Unit Value

4

Maximum number of times course can be repeated for additional credit

0

Maximum Units

4

Prerequisites

PSTAT 120A-B; and PSTAT 126 with a minimum grade of C or better.