Use of cluster analysis for collapsing imputation classes

Articles and reports: 12-001-X199000114551
Description:

The problem of collapsing the imputation classes defined by a large number of cross-classifications of auxiliary variables is considered. A solution based on cluster analysis to reduce the number of levels of auxiliary variables to a reasonably small number of imputation classes is proposed. The motivation and solution of this general problem are illustrated by the imputation of age in the Hospital Morbidity System where auxiliary variables are sex and diagnosis.

Issue Number: 1990001
Author(s): Langlet, Éric
Main Product: Survey Methodology
Format Release date More information
PDF June 15, 1990

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