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Research Article

Using Structural Equation Modeling to Examine Group Differences in Assessment Booklet Designs with Sparse Data

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Pages 253-272 | Published online: 07 Jul 2008
 

Abstract

The current research demonstrates the effectiveness of using structural equation modeling (SEM) for the investigation of subgroup differences with sparse data designs where not every student takes every item. Simulations were conducted that reflected missing data structures like those encountered in large survey assessment programs (e.g., National Assessment of Educational Progress). A maximum likelihood method of estimation was implemented that allowed all data to be used without performing any imputation. A multiple indicators multiple causes (MIMIC) model was used to examine group differences. There was no detriment to the estimation of the MIMIC model parameters under sparse data design conditions when compared to the design without missing data. The overall size of samples had more influence on the variability of estimates than did the data design.

Notes

1 where = α of .05 and nreps is the number of replications.

Insightful Corp. (2005). S-Plus 7.0. Reinach, Switzerland.

Palaszewski, B. (1997). Multidimensional models for matrix-sampled reading tasks. (Available from the ERIC Document Reproduction Service No. ED 412 221).

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