Title of article :
Multiple imputation using multivariate gh transformations
Author/Authors :
Yulei He&Trivellore E. Raghunathan، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
Multiple imputation has emerged as a popular approach to handling data sets with missing values. For
incomplete continuous variables, imputations are usually produced using multivariate normal models.
However, this approach might be problematic for variables with a strong non-normal shape, as itwould generate
imputations incoherent with actual distributions and thus lead to incorrect inferences. For non-normal
data, we consider a multivariate extension of Tukey’s gh distribution/transformation [38] to accommodate
skewness and/or kurtosis and capture the correlation among the variables. We propose an algorithm to
fit the incomplete data with the model and generate imputations. We apply the method to a national data
set for hospital performance on several standard quality measures, which are highly skewed to the left
and substantially correlated with each other.We use Monte Carlo studies to assess the performance of the
proposed approach.We discuss possible generalizations and give some advices to practitioners on how to
handle non-normal incomplete data.
Keywords :
Bootstrap , Hospital quality , imputation diagnostics , latent variable , multivariate missingness , Quantiles
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS