4.1 Article

Effects of Missing Data Methods in SEM Under Conditions of Incomplete and Nonnormal Data

Journal

JOURNAL OF EXPERIMENTAL EDUCATION
Volume 85, Issue 2, Pages 231-258

Publisher

ROUTLEDGE JOURNALS, TAYLOR & FRANCIS LTD
DOI: 10.1080/00220973.2015.1134418

Keywords

Factor analysis; missing data treatment; Monte Carlo; nonnormal data; simulation; structural equation modeling (SEM)

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Using Monte Carlo simulations, this research examined the performance of four missing data methods in SEM under different multivariate distributional conditions. The effects of four independent variables (sample size, missing proportion, distribution shape, and factor loading magnitude) were investigated on six outcome variables: convergence rate, parameter estimate bias, MSE of parameter estimates, standard error coverage, model rejection rate, and model goodness of fitRMSEA. A three-factor CFA model was used. Findings indicated that FIML outperformed the other methods in MCAR, and MI should be used to increase the plausibility of MAR. SRPI was not comparable to the other three methods in either MCAR or MAR.

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