Title of article :
A distance-based rounding strategy for post-imputation ordinal data
Author/Authors :
Hakan Demirtas، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
Multiple imputation has emerged as a widely used model-based approach in dealing with incomplete
data in many application areas. Gaussian and log-linear imputation models are fairly straightforward to
implement for continuous and discrete data, respectively. However, in missing data settings which include
a mix of continuous and discrete variables, correct specification of the imputation model could be a
daunting task owing to the lack of flexible models for the joint distribution of variables of different nature.
This complication, along with accessibility to software packages that are capable of carrying out multiple
imputation under the assumption of joint multivariate normality, appears to encourage applied researchers
for pragmatically treating the discrete variables as continuous for imputation purposes, and subsequently
rounding the imputed values to the nearest observed category. In this article, I introduce a distance-based
rounding approach for ordinal variables in the presence of continuous ones. The first step of the proposed
rounding process is predicated upon creating indicator variables that correspond to the ordinal levels,
followed by jointly imputing all variables under the assumption of multivariate normality. The imputed
values are then converted to the ordinal scale based on their Euclidean distances to a set of indicators, with
minimal distance corresponding to the closest match. I compare the performance of this technique to crude
rounding via commonly accepted accuracy and precision measures with simulated data sets.
Keywords :
multiple imputation , Rounding , Bias , Precision , Ordinal data
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS