STAT 6021

Linear Models for Data Science

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Course Description

Pre-Requisite(s): A previous statistics course, a previous linear algebra course, and permission of instructor

An introduction to linear statistical models in the context of data science. Topics include simple and multiple linear regression, generalized linear models, time series, analysis of covariance, tree-based classification, and principal components. The primary software is R.


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