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Gaussianization-based quasi-imputation and expansion strategies for incomplete correlated binary responses
- Source :
- Statistics in Medicine. 26:782-799
- Publication Year :
- 2007
- Publisher :
- Wiley, 2007.
-
Abstract
- New quasi-imputation and expansion strategies for correlated binary responses are proposed by borrowing ideas from random number generation. The core idea is to convert correlated binary outcomes to multivariate normal outcomes in a sensible way so that re-conversion to the binary scale, after performing multiple imputation, yields the original specified marginal expectations and correlations. This conversion process ensures that the correlations are transformed reasonably which in turn allows us to take advantage of well-developed imputation techniques for Gaussian outcomes. We use the phrase 'quasi' because the original observations are not guaranteed to be preserved. We argue that if the inferential goals are well-defined, it is not necessary to strictly adhere to the established definition of multiple imputation. Our expansion scheme employs a similar strategy where imputation is used as an intermediate step. It leads to proportionally inflated observed patterns, forcing the data set to a complete rectangular format. The plausibility of the proposed methodology is examined by applying it to a wide range of simulated data sets that reflect alternative assumptions on complete data populations and missing-data mechanisms. We also present an application using a data set from obesity research. We conclude that the proposed method is a promising tool for handling incomplete longitudinal or clustered binary outcomes under ignorable non-response mechanisms.
- Subjects :
- Male
Statistics and Probability
Phrase
Adolescent
Epidemiology
Random number generation
Gaussian
Normal Distribution
Binary scaling
Binary number
Coronary Disease
Multivariate normal distribution
computer.software_genre
symbols.namesake
Humans
Computer Simulation
Longitudinal Studies
Obesity
Imputation (statistics)
Child
Mathematics
Missing data
Child, Preschool
Data Interpretation, Statistical
symbols
Female
Data mining
computer
Algorithm
Algorithms
Subjects
Details
- ISSN :
- 10970258 and 02776715
- Volume :
- 26
- Database :
- OpenAIRE
- Journal :
- Statistics in Medicine
- Accession number :
- edsair.doi.dedup.....355a5dcfd4989145dfbe1be6905ed66e