Methodology (Mar 2021)

Multiple Imputation to Balance Unbalanced Designs for Two-Way Analysis of Variance

  • Joost R. van Ginkel,
  • Pieter M. Kroonenberg

DOI
https://doi.org/10.5964/meth.6085
Journal volume & issue
Vol. 17, no. 1
pp. 39 – 57

Abstract

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A balanced ANOVA design provides an unambiguous interpretation of the F-tests, and has more power than an unbalanced design. In earlier literature, multiple imputation was proposed to create balance in unbalanced designs, as an alternative to Type-III sum of squares. In the current simulation study we studied four pooled statistics for multiple imputation, namely D₀, D₁, D₂, and D₃ in unbalanced data, and compared them with Type-III sum of squares. Statistics D₁ and D₂ generally performed best regarding Type-I error rates, and had power rates closest to that of Type-III sum of squares. Additionally, for the interaction, D₁ produced power rates higher than Type-III sum of squares. For multiply imputed datasets D₁ and D₂ may be the best methods for pooling the results in multiply imputed datasets, and for unbalanced data, D₁ might be a good alternative to Type-III sum of squares regarding the interaction.

Keywords