Journal article

Rounding non-binary categorical variables following multivariate normal imputation: evaluation of simple methods and implications for practice

JC Galati, KA Seaton, KJ Lee, JA Simpson, JB Carlin

Journal of Statistical Computation and Simulation | Published : 2014

Abstract

We study bias arising from rounding categorical variables following multivariate normal (MVN) imputation. This task has been well studied for binary variables, but not for more general categorical variables. Three methods that assign imputed values to categories based on fixed reference points are compared using 25 specific scenarios covering variables with k=3,..., 7 categories, and five distributional shapes, and for each k=3,..., 7, we examine the distribution of bias arising over 100,000 distributions drawn from a symmetric Dirichlet distribution. We observed, on both empirical and theoretical grounds, that one method (projected-distance-based rounding) is superior to the other two metho..

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Grants

Awarded by National Health and Medical Research Council


Funding Acknowledgements

This work was supported by the National Health and Medical Research Council Grant Number 607400, and by the Victorian Government's Operational Infrastructure Support Program.