Week 4

Effect Decomposition, Random Coefficient Model, and Cross-level Interactions

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 4.6, 5.1–5.3
  3. Attend the Thursday session and participate in the class exercise
  4. Complete Homework 4
  5. Now that you have learned the basics of MLM, start thinking about your project (Prospectus due around Oct 18)

Lecture

Slides

You can view and download the slides here: PDF

Overview

Check your learning: The Type I error inflation problem when using OLS regression for clustered data applies to





Ecological Fallacy

Check your learning: In a “bizarre” research finding that found a correlation between chocolate consumption and number of Nobel prize winners at the country level, which of the following is reasonable to infer?




Check your learning: Summarize the “Big-Fish-Little-Pond Effect” in terms of how a person’s own academic performance and the overall performance of the person’s school on academic self-concept.


Decomposing Effects

Between/within effects

Note: What I called “cluster-mean centering” is the same as “within-group centering” in Snijders & Bosker (2012)

Check your learning: Why do we need to separate a level-1 predictor into two variables in the model?





Path diagram and equations

Thinking exercise: Based on the between-cluster level component in the path diagram and in the equations, meanses can predict




Check your learning: Based on the results shown in the video, is the school-level slope or the student-level slope larger for the association between SES and math achievement?




Interpret the between/within effects

Try it yourself: Obtain the predicted mathach for Student B, and compare with Students A and C.


Contextual Effects

Check your learning: The contextual effect is





Random Slopes/Random Coefficients

Developing intuition

Check your learning: In a random-coefficient model, if there are \(J\) cluster, there are






Equations and path diagram

Check your learning: Which combination of \(\tau_0\) and \(\tau_1\) best describes the graph below?






Interpretations

Check your learning: In a random-slope model, if \(\gamma_{10}\) (the average slope) = 0.2, \(\tau^2_1 = 0.04\), what is the 68% plausible range for the slopes across clusters?






Cross-Level Interaction

In the video, there was a mistake in the path diagram, in that one of the circle should be \(\beta_{1j}\), not \(\beta_{0j}\)

Check your learning: Conceptually, a cross-level interaction is the same as