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Multi-level Modeling (MLM) Refresher. Jessaca Spybrook Western Michigan University. MLM Refresher. Goal of session Brief review of multilevel models Establish common language Establish common notation. Hierarchical Data. Individuals grouped into larger units Examples
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Multi-level Modeling (MLM) Refresher Jessaca Spybrook Western Michigan University
MLM Refresher • Goal of session • Brief review of multilevel models • Establish common language • Establish common notation
Hierarchical Data • Individuals grouped into larger units • Examples • Students in schools • Citizens in communities • Focus Example • Africa Program for Education Impact Evaluation in the Gambia • Students in schools • Teachers in schools • Classrooms in schools
Hierarchical Data • Methods for analyzing data • Put everything at one level • Aggregate data up to level 2 • Model both levels together • Model both levels together • Improved estimation of individual effects • Questions related to cross-level effects • Partitioning of variance among levels
Hierarchical Data • Modeling both levels together • Hierarchical linear models, multilevel models, mixed effects models, random effects models, random coefficient models
Hierarchical Data • Scenario • The Gambia data (2008) • Students nested in schools • 2,657 ->2,008 students (pupils data) • 271 ->204 schools (head teacher data)
Hierarchical Data • Variables • DV: • Number of words read correctly in 60 seconds (reading fluency) [S2Q3_PP] • IVs: • Treatment (L2) [trmt –WSC and Grant] • Age (L1) [age_PP] • Mean school age (L2) [age_PP_m]
Guiding Questions (A) • Guiding Questions (A) • What is the mean reading fluency for all students? • How much variation in reading fluency is between schools? Within schools?
The Model Level 1 (students): Yijis reading fluency for student i in school j is the mean reading fluency for school j rij is the random error associated with student i in school j, Level 2 (schools): is the average school mean reading fluency across the schools u0j is the random error associated with school means,
The Model Combined Model: - Demo in HLM - Fill in Table as we go
ICC Intraclass Correlation: is the between school variance is the within school variance
Guiding Question (B) • Guiding Question (B) • Is there a difference in reading fluency at baseline for those in the treatment condition compared to those in the control condition?
The Model Level 1 (students): Yijis reading fluency for student i in school j is the mean reading fluency for school j rij is the random error associated with student i in school j, Level 2 (schools): is the average school mean reading fluency for the control schools Wj is the indicator for condition (1=treatment including WSC and Grant, 0=control) is the main effect of treatment, average difference in mean reading fluency for treatment and control schools is the random error associated with control school means, now a conditional variance,
The Model Combined Model:
Guiding Questions (C) • Guiding Questions (C) • What is the relationship between students age and reading fluency? • Consider 5 options • 1 - Age is group mean centered at L1 • 2 - Age is uncentered at L1 • 3 - Age is grand mean centered at L1 • 4 - Age is group mean centered at L1, grand mean centered at L2 • 5 - Age is grand mean centered at L1, grand mean centered at L2
The Model-Option 1 Level 1 (students): Yijis reading fluency for student i in school j is the average unadjusted mean reading fluency for school j is the average change in reading fluency for a 1 unit increase in student age in school j (within school age-reading fluency slope) rij is the random error associated with student i in school j, Level 2 (schools): is the average school mean reading fluency across the schools is the average age-reading fluency slope within schools u0j is the random error associated with school means,
The Model Combined Model:
Option 2 • What if we left age uncentered? • Same models, age uncentered • Intercept is now average school mean reading fluency for schools when age = 0 • Slope is now composite of within school age-reading fluency relationship and between-school age reading fluency relationship
Option 3 • What if we grand mean centered age? • Same models, age grand mean centered • Intercept is now average adjusted school mean reading fluency for schools • Slope is now composite of within school age-reading fluency relationship and between-school age reading fluency relationship
Option 4 • What if we group mean centered age at L1 and grand mean centered age at L2? • Need new model • Aggregate version of age for each school at L2
The Model – Option 4 Level 1 (students): Yijis reading fluency for student i in school j is the average unadjusted mean reading fluency for school j is the average change in reading fluency for a 1 unit increase in student age in school j (within school age-reading fluency slope) rij is the random error associated with student i in school j, Level 2 (schools): is the average school mean reading fluency across the schools adjusted for school mean age is the average change in school mean reading fluency for a 1 unit increase in school mean age across schools (between school mean age-reading fluency relationship) is the average age-reading fluency slope within schools u0j is the random error associated with adjusted school means, now a conditional,
Option 5 • What is we grand mean centered age at L1 and grand mean centered age at L2? • Same model, age grand mean centered at L1 • Intercept is same but adjusted mean • is same • is the compositional effect of age, weighted composite of the within and between slopes, difference between 2 students with same age value but who attend schools that differ by one unit of school mean age • Note:
Next Steps • Practice session in lab • Questions/comments via video session