Search

Multiple Regression
Multiple Regression
  • Syllabus
  • Schedule
  • Readings
  • Assignments
  • Classes
  • Group Project
  • Blog
  • Resources
Class sessions
  • 1: Context for and Use of Regression Modelling
  • 2: Fitting Regression Models
  • 3: Slope Inference
  • 4: ANOVA Table
  • 5 SLR Review
  • 6 Take Home Exam 1
  • 7 MLR Intro
  • 8 MLR Intro 2
  • 9 Parallel & Non-Parallel Slopes
  • 10 Multicollinearity & Nested F
  • 11 Outliers, Leverage & Influence
  • 12 Bootstrap for Inference
  • 13 MLR & IPUMS - Data Wrangling
  • 14 MLR & IPUMS - Modeling
  • 15 Transformations
  • 16 Odds, Prob, ORs
  • 17 Simple Logistic - 1
  • 18 Simple Logistic 2
  • 19 Multiple Logistic - 1
  • 20 Multiple Logistic - 2
  • 21 Logistic Data Visualization
  • 22 Logistic Data Visualization
  • 23 Logistic Regression Review
  • 24 Open Review
Group Project Extra Sessions
  • Workshop 1 - GitHub
  • Workshop 2 - dplyr
  • Workshop 3 - ggplot

Transformations

Materials from class on Monday, March 30, 2020
  • In Class Materials
  • Extra Practice

In Class Materials

  • Slides (.pdf format - no raw file)
  • R Code linked in the slides: Planets, SpeciesArea, StateSAT82

Extra Practice

  • A lab on transformations (and raw .rmd)
  • A stand-alone document describing these ideas - and working through an example that just has Y log transformed, similar to homework (and raw .rmd)

Last updated on March 30, 2020

Edit this page


SDS 291: Multiple Regression (Spring 2020)
Smith College    Program on Statistical & Data Sciences

Dr. Benjamin Capistrant    bcapistrant@smith.edu

Monday & Wednesday    TBD
Zoom

All content licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.

Content 2020 Ben Capistrant

A tremendous thanks to Andrew Heiss whose course sites served as the basis for the format and structure of this site. They employ the Academic theme in blogdown and built with Hugo.

View the source at GitHub.

Cite
Copy Download