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Structural Equation Modeling: A Multidisciplinary Journal

Volume 15, Issue 2, 2008

Variance Estimation Using Replication Methods in Structural Equation Modeling With Complex Sample Data

Variance Estimation Using Replication Methods in Structural Equation Modeling With Complex Sample Data

DOI:
10.1080/10705510801922316
Laura M. Stapletona

pages 183-210

Available online: 17 Apr 2008

Abstract

This article discusses replication sampling variance estimation techniques that are often applied in analyses using data from complex sampling designs: jackknife repeated replication, balanced repeated replication, and bootstrapping. These techniques are used with traditional analyses such as regression, but are currently not used with structural equation modeling (SEM) analyses. This article provides an extension of these methods to SEM analyses, including a proposed adjustment to the likelihood ratio test, and presents the results from a simulation study suggesting replication estimates are robust. Finally, a demonstration of the application of these methods using data from the Early Childhood Longitudinal Study is included. Secondary analysts can undertake these more robust methods of sampling variance estimation if they have access to certain SEM software packages and data management packages such as SAS, as shown in the article.

 

Details

  • Citation information:
  • Available online: 17 Apr 2008

Author affiliations

  • a University of Maryland Baltimore County,

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