Abstract
Background and PurposeTo compare the effects of missing-data imputation techniques, mean imputation, group mean imputation, regression imputation, and multiple imputation (MI), on the results of exploratory factor analysis under different missing assumptions.MethodsMissing data with different missing assumptions were generated from true data. The quality of imputed data was examined by correlation coefficients. Factor structures were compared indirectly by coefficients of congruence and directly by factor structures.ResultsMI had the best quality and matching factor structure to the true data for all missing assumptions with different missing rates. Mean imputation had the least favorable results in factor analysis. The imputation techniques revealed no important differences with 10% of data missing.ConclusionMI showed the best results, especially with larger proportions of missing data.
Publisher
Springer Publishing Company
Subject
General Medicine,General Nursing
Cited by
5 articles.
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