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Informing Harmonization Decisions in Integrative Data Analysis: Exploring the Measurement Multiverse
by
Cole, Veronica T
, Bauer, Daniel J
, Hussong, Andrea M
, Gottfredson, Nisha C
, Curran, Patrick J
in
Alcohol use
/ Data analysis
/ Datasets
/ Decision making
/ Decisions
/ Delinquency
/ Departments
/ Drinking
/ Factor analysis
/ Harmonization
/ Hypothesis Testing
/ Inferences
/ Item Response Theory
/ Measurement
/ Measures
/ Meta Analysis
/ Regression (Statistics)
/ Researchers
/ Statistical Inference
/ Validity
2023
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Informing Harmonization Decisions in Integrative Data Analysis: Exploring the Measurement Multiverse
by
Cole, Veronica T
, Bauer, Daniel J
, Hussong, Andrea M
, Gottfredson, Nisha C
, Curran, Patrick J
in
Alcohol use
/ Data analysis
/ Datasets
/ Decision making
/ Decisions
/ Delinquency
/ Departments
/ Drinking
/ Factor analysis
/ Harmonization
/ Hypothesis Testing
/ Inferences
/ Item Response Theory
/ Measurement
/ Measures
/ Meta Analysis
/ Regression (Statistics)
/ Researchers
/ Statistical Inference
/ Validity
2023
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Do you wish to request the book?
Informing Harmonization Decisions in Integrative Data Analysis: Exploring the Measurement Multiverse
by
Cole, Veronica T
, Bauer, Daniel J
, Hussong, Andrea M
, Gottfredson, Nisha C
, Curran, Patrick J
in
Alcohol use
/ Data analysis
/ Datasets
/ Decision making
/ Decisions
/ Delinquency
/ Departments
/ Drinking
/ Factor analysis
/ Harmonization
/ Hypothesis Testing
/ Inferences
/ Item Response Theory
/ Measurement
/ Measures
/ Meta Analysis
/ Regression (Statistics)
/ Researchers
/ Statistical Inference
/ Validity
2023
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Informing Harmonization Decisions in Integrative Data Analysis: Exploring the Measurement Multiverse
Journal Article
Informing Harmonization Decisions in Integrative Data Analysis: Exploring the Measurement Multiverse
2023
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Overview
Combining datasets in an integrative data analysis (IDA) requires researchers to make a number of decisions about how best to harmonize item responses across datasets. This entails two sets of steps: logical harmonization, which involves combining items which appear similar across datasets, and analytic harmonization, which involves using psychometric models to find and account for cross-study differences in measurement. Embedded in logical and analytic harmonization are many decisions, from deciding whether items can be combined prima facie to how best to find covariate effects on specific items. Researchers may not have specific hypotheses about these decisions, and each individual choice may seem arbitrary, but the cumulative effects of these decisions are unknown. In the current study, we conducted an IDA of the relationship between alcohol use and delinquency using three datasets (total N = 2245). For analytic harmonization, we used moderated nonlinear factor analysis (MNLFA) to generate factor scores for delinquency. We conducted both logical and analytic harmonization 72 times, each time making a different set of decisions. We assessed the cumulative influence of these decisions on MNLFA parameter estimates, factor scores, and estimates of the relationship between delinquency and alcohol use. There were differences across paths in MNLFA parameter estimates, but fewer differences in estimates of factor scores and regression parameters linking delinquency to alcohol use. These results suggest that factor scores may be relatively robust to subtly different decisions in data harmonization, and measurement model parameters are less so.
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