STAT 6120

Linear Models

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Course Description

Pre-Requisite(s): Graduate standing in Statistics, or instructor permission

Course develops fundamental methodology to regression and linear-models analysis in general. Topics include model fitting and inference, partial and sequential testing, variable selection, transformations, diagnostics for influential observations, multicollinearity, and regression in nonstandard settings. Conceptual discussion in lectures is supplemented withhands-on practice in applied data-analysis tasks using SAS or R statistical software.


  • Jeffrey Holt

     Rating

     Difficulty

     GPA

    3.72

     Sections

    Last Taught

    Fall 2012

  • Shan Yu

     Rating

    2.67

     Difficulty

    3.00

     GPA

    3.58

     Sections

    Last Taught

    Fall 2022

  • Dan Spitzner

     Rating

     Difficulty

     GPA

    3.56

     Sections

    Last Taught

    Fall 2010

  • Lingxiao Wang

     Rating

     Difficulty

     GPA

    3.55

     Sections

    Last Taught

    Fall 2025

  • Tianxi Li

     Rating

     Difficulty

     GPA

    3.54

     Sections

    Last Taught

    Fall 2020

  • Tingting Zhang

     Rating

     Difficulty

     GPA

    3.52

     Sections

    Last Taught

    Fall 2017

  • Faculty Staff

     Rating

     Difficulty

     GPA

     Sections

    Last Taught

    Fall 2015

  • To Announced

     Rating

     Difficulty

     GPA

     Sections

    Last Taught

    Fall 2023