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23 - The Design and Analysis of Data from Dyads and Groups

from Part IV - Understanding What Your Data Are Telling You About Psychological Processes

Published online by Cambridge University Press:  12 December 2024

Harry T. Reis
Affiliation:
University of Rochester, New York
Tessa West
Affiliation:
New York University
Charles M. Judd
Affiliation:
University of Colorado Boulder
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Summary

The two statistical approaches commonly used in the analysis of dyadic and group data, multilevel modeling and structural equation modeling, are reviewed. Next considered are three different models for dyadic data, focusing mostly on the very popular actor–partner interdependence model (APIM). We further consider power analyses for the APIM as well as the partition of nonindependence. We then present an overview of the analysis of over-time dyadic data, considering growth-curve models, the stability-and-influence model, and the over-time APIM. After that, we turn to group data and focus on considerations of the analysis of group data using multilevel modeling, including a discussion of the social relations model, which is a model of dyadic data from groups of persons. The final topic concerns measurement equivalence of constructs across members of different types in dyadic and group studies.

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Publisher: Cambridge University Press
Print publication year: 2024

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