The impact of missing data rates and imputation methods on the assumption of unidimensionality
Ayman Omar Baniamer
PLOS ONE, 2025, vol. 20, issue 4, 1-18
Abstract:
Statistical models are essential tools in data analysis. However, missing data plays a pivotal role in impacting the assumptions and effectiveness of statistical models, especially when there is a significant amount of missing data. This study addresses one of the core assumptions supporting many statistical models, the assumption of unidimensionality. It examines the impact of missing data rates and imputation methods on fulfilling this assumption. The study employs three imputation methods: Corrected Item Mean, multiple imputation, and expectation maximization, assessing their performance across nineteen levels of missing data rates, and examining their impact on the assumption of unidimensionality using several indicators (Cronbach’s alpha, corrected correlation coefficients, factor analysis (Eigenvalues ( λ1, λ1/λ2, and λ1−λ2λ2−λ3), cumulative variance, and communalities). The study concluded that all imputation methods used effectively provided data that maintained the unidimensionality assumption, regardless of missing data rates. Additionally, it was found that most of the unidimensionality indicators increased in value as missing data rates rose.
Date: 2025
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Persistent link: https://EconPapers.repec.org/RePEc:plo:pone00:0321344
DOI: 10.1371/journal.pone.0321344
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