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Summary AMDA Spring: topic Multi Level Modeling

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Part of my summary of all topics in AMDA Spring . Each topic is detailed, including explanations, additional clarifications, and relevant exam questions.

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TOPIC 3: Multilevel Analysis
______________________________________________________
In multi-level analysis, data is structured at multiple levels. The analysis accounts for this nested
structure. Examples of hierarchical data:
1. Implicit hierarchy of data:
Example: Students at their schools
 Lower level (1): Individual students and the characteristics specific to each student
(age, gender, IQ).  Things that are different per subject
 Higher level (2): Groups of students (classes, schools). The characteristics are
constant for all students within the same group but can vary across different groups
(classes, school)
 Researchers are interested in how level 1 variables are associated with educational
outcomes. They want to consider how group-level (2) variables influence these outcomes.

2. Explicit stage sampling data:
In longitudinal data, subjects and their multiple measures are present, and the data has
some hierarchy.
 Lower level (1): Individual occasions/observations. These are the repeated measures
for each individual over time. Focus within the individual.
= Things measured that can change over time, like mood, test score, and health.
 Higher level (2): Individuals: Each individual is the unit of analysis. Characteristics
that are constant over time are age, gender, and personality.
= Variables that remain stable or change slowly over time. These are the same for all
occasions over time measured for an individual.
The difference between levels:
Lowest level (Level 1): Variables where changes occur per individual/ measurement. It can change in
every condition.
 Focus on variation within individuals.
 Can vary widely
Higher level (Level 2): Variables that are more stable dependent on the group where they are in.
Variables may vary between different groups.
 In this level, you have clusters. These are groups to which individuals belong.
 You don’t necessarily need the same number of people in each group.
 There is less variability within the same group. There is more variability between groups.
More complex hierarchical structures:
 Three-level or higher-level data: E.g., pupils > classes > schools
 Cross-classified data: Combined.

, For example, pupils in a certain neighbourhood go to a particular school. The schools and the
neighbourhood are not nested, but there are still two levels (neighbourhood> students and
students > schools).
The hierarchy depends on the definition of the variables. It is important to define the hierarchy first.
Problem with hierarchical data: Observations within a cluster are correlated
 Residuals should follow a random pattern (for linear regression). With correlated
data, this is not the case
 Linear regression uses total variance as error variance
 Would lead to incorrect SEs and p-values for regression coefficients when not taking
into account intra-class correlation
 Underestimated SEs and inflated type-I error rates
When is the correlation larger?
 Small differences within clusters
 Large differences between clusters
Solution: Allowing for the distinction between within-cluster and between-cluster variances to
provide correct SEs and p-values:
 Within clusters: Variance at lower level
 Between clusters: Variance at a higher level
 Total variance: Combination of these two
How it helps (preview):
1. Including random effects: To account for variability between clusters:
Random intercepts allow each cluster to have its baseline level. Clusters may differ
systematically from one another.
2. Including fixed effects: To estimate the average relation between predictors and outcomes
across all clusters.
3. Partitioning variance: Into within- and between-cluster components. This helps to
understand the total variance.
Benefits Multi-Level Modeling:
- Using correct SEs and P-values  But no big effect on estimating regression coefficients
- Ask richer questions:
 Within-person changes: Pattern change & time-varying covariates
 Inter-individual differences: Change patterns between individuals and associated
factors.
 Starting point differences & change rate differences
- Practical reason: Handling various types of data & missing data
Leads to more dependency among observations.

, RM-ANOVA is an often-used method to analyze repeated measures in longitudinal data.
Limitations of M(ANOVA):
 RM-ANOVA assumes sphericity or compound symmetry. This means the variances of the
differences between all pairs are equal. This assumption is often unrealistic in real-world
data.
o RM-ANOVA equals a random intercept model (not random slopes). However, it
cannot model individual differences in change rates over time.
 RM-ANOVA requires a balanced design where all subjects are measured at the same set of
time points. This is often not the case in longitudinal studies, where some may miss certain
time points.
o RM-ANOVA cannot capture the relation between age and response in a longitudinal
design.
 RM-ANOVA cannot handle missing data. Subjects that are removed reduce sample size and
introduce bias.
 RM-ANOVA cannot handle non-normally distributed data. It struggles with data like
dichotomous variables, scales, and sum scores.
 RM-ANOVA cannot handle time-varying predictors

Steps for analysing longitudinal data (multi-level):
Step 1: Data format & loading the data
Two ways of formatting longitudinal data:
Wide format (person-level) = Each data line represents a single person. All observations and scores
are arranged in columns and used in simple analyses and summary statistics.




 Problematic when persons are measured at different time points
 Problematic when the number of time points differs between persons (missing data)
 How to represent time-varying covariates?
 Software often cannot read this format
Long format (person-period): Each data line represents a combination of persons and an
observation (time point). This has separate rows for each observation. A person has as many data
lines as observations available for that person.


 This is the one the programs can
read.

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Subido en
9 de diciembre de 2024
Número de páginas
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Escrito en
2024/2025
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RESUMEN

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