Week 12

Multilevel Logistic Models

Week Learning Objectives

By the end of this module, you will be able to

Task Lists

  1. Review the resources (lecture videos and slides)
  2. Complete the assigned readings
    • Snijders & Bosker ch 17.1–17.4
  3. Attend the Thursday session and participate in the class exercise
  4. Complete peer review for two of your peers’ postings (due Monday November 15, end of day)
  5. Complete Homework 9

Lecture

Slides

Note that in some of the videos below the Bayeisan analyses were used; however, for the class this year we will stay with frequentist analyses. The results and interpretations are basically; just note some differences in the terminology.

You can view and download the slides here: PDF

Logistic MLM


Check your learning: Which of the following is a binary variable?





Example Data


Check your learning: Which of the following is not a reason to use a logistic model?





Elements of Logistic MLM


Check your learning: A logistic model assumes that the outcome follows






Check your learning: A log odds of 0.5 corresponds to a probability of





If you have trouble understanding what “odds” and “log odds” are, you are not alone. This video may give you a better idea: https://www.youtube.com/watch?v=ARfXDSkQf1Y

Unconditional Model

Model equations


Check your learning: In a logistic model predicting whether a person reported a daily stressor, the coefficient of age was -0.5. The interpretation is that





Adding Predictors

Generalized Linear Mixed Model (GLMM)


Check your learning: A researcher wants to compare the proportion of minority hires in the past year across departments and schools. The total number of hires for each department is known. Which model is the most appropriate?