Multiple imputation of missing values in household data with structural zeros - ARCHIVED

Articles and reports: 12-001-X201900200005
Description: We present an approach for imputation of missing items in multivariate categorical data nested within households. The approach relies on a latent class model that (i) allows for household-level and individual-level variables, (ii) ensures that impossible household configurations have zero probability in the model, and (iii) can preserve multivariate distributions both within households and across households. We present a Gibbs sampler for estimating the model and generating imputations. We also describe strategies for improving the computational efficiency of the model estimation. We illustrate the performance of the approach with data that mimic the variables collected in typical population censuses.
Issue Number: 2019002
Author(s): Akande, Olanrewaju; Reiter, Jerome P.; Barrientos, Andrés F.
Main Product: Survey Methodology
Format Release date More information
HTML June 27, 2019
PDF June 27, 2019

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