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Nested multiple imputation of NMES via partially incompatible MCMC
Authors:Donald B Rubin
Institution:Department of Statistics, Harvard University Cambridge, Massachusetts, 02138, USA
Abstract:The multiple imputation of the National Medical Expenditure Survey (NMES) involved the use of two new techniques, both having potentially broad applicability. The first is to use distributionally incompatible MCMC (Markov Chain Monte Carlo), but to apply it only partially, to impute the missing values that destroy a monotone pattern, thereby limiting the extent of incompatibility. The second technique is to split the missing data into two parts, one that is much more computationally expensive to impute than the other, and create several imputations of the second part for each of the first part, thereby creating nested multiple imputations with their increased inferential efficiency.
Keywords:Gibbs sampler  iterative simulation  nonresponse  missing data  public-use data sets  tobacco litigation
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