A Markov Chain Monte Carlo Multiple Imputation Procedure for Dealing with Item Nonresponse in the German SAVE Survey
Content
Important empirical information on household behavior is obtained from
surveys. However, various interdependent factors that can only be controlled to a limited
extent lead to unit and item nonresponse, and missing data on certain items is a frequent
source of difficulties in statistical practice. This paper presents the theoretical underpinnings
of a Markov Chain Monte Carlo multiple imputation procedure and applies this
procedure to a socio-economic survey of German households, the SAVE survey. I discuss
convergence properties and results of the iterative multiple imputation method and I
compare them briefly with other imputation approaches. Concerning missing data in the
SAVE survey, the results suggest that item nonresponse is not occurring randomly but is
related to the included covariates. The analysis further indicates that there might be
differences in the character of nonresponse across asset types. Concerning the
methodology of imputation, the paper underlines that it would be of particular interest to
apply different imputation methods to the same dataset and to compare the findings.
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