Detailseite
Robust and efficient multiple imputation of complex data sets
Antragsteller
Professor Dr. Jost Reinecke; Professor Dr. Martin Spieß
Fachliche Zuordnung
Empirische Sozialforschung
Förderung
Förderung von 2010 bis 2012
Projektkennung
Deutsche Forschungsgemeinschaft (DFG) - Projektnummer 162411054
Missing data occur even in carefully conducted scientific surveys. However, valid inferences based on incompletely observed data sets are only possible if the missing data problem is handled properly. One increasingly accepted method supported by data base producers to compensate for missing data is the method of multiple imputation. Available model-based techniques of generating multiple imputations are restricted to fully parametric models, which, if misspecified may produce unnecessarily imprecise or even biased inferences. Furthermore, most of the available software is not designed to efficiently handle large complex clustered or panel data sets. In this project, multiple imputation procedures will be extended to enable efficient and robust imputation of complex data sets based on an approximate Bayesian and a Bayesian approach, thus allowing valid and more precise inferences. Guidelines for the use of the multiple imputation method, based on currently available software and on functions and modules to be developed (callable in R), will be published, particularly with regard to possible limitations discussed in the literature. The need of the extensions developed will be illustrated based on substantive applications and through analyses of real data sets. The imputation programs will be made available to the scientific community.
DFG-Verfahren
Schwerpunktprogramme
Teilprojekt zu
SPP 1292:
Survey Methodology