Title of article :
Nonparametric methods for the estimation of imputation uncertainty
Author/Authors :
Akbar Heydarbeygie&Nima Ahmadi، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
It is cleared in recent researches that the raising of missing values in datasets is inevitable. Imputation of
missing data is one of the several methods which have been introduced to overcome this issue. Imputation
techniques are trying to answer the case of missing data by covering missing values with reasonable
estimates permanently. There are a lot of benefits for these procedures rather than their drawbacks. The
operation of these methods has not been clarified, which means that they provide mistrust among analytical
results. One approach to evaluate the outcomes of the imputation process is estimating uncertainty in the
imputed data. Nonparametric methods are appropriate to estimating the uncertainty when data are not
followed by any particular distribution. This paper deals with a nonparametric method for estimation and
testing the significance of the imputation uncertainty, which is based onWilcoxon test statistic, and which
could be employed for estimating the precision of the imputed values created by imputation methods. This
proposed procedure could be employed to judge the possibility of the imputation process for datasets, and
to evaluate the influence of proper imputation methods when they are utilized to the same dataset. This
proposed approach has been compared with other nonparametric resampling methods, including bootstrap
and jackknife to estimate uncertainty in the imputed data under the Bayesian bootstrap imputation method.
The ideas supporting the proposed method are clarified in detail, and a simulation study, which indicates
how the approach has been employed in practical situations, is illustrated.
Keywords :
Imputation , Missing data , Bootstrap , Jackknife , Uncertainty
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS