Title :
Routine multiple imputation in statistical databases
Author :
van Buuren, S. ; van Mulligen, E.M. ; Brand, J.P.L.
Author_Institution :
Dept. of Stat., TNO-PG, Leiden, Netherlands
Abstract :
This paper deals with problems concerning missing data in statistical databases. Multiple imputation is a statistically sound technique for handling incomplete data. Two problems should be addressed before the routine application of the technique becomes feasible. First, if imputations are to be appropriate for more than one statistical analysis, they should be generated independently of any scientific models that are to be applied to the data at a later stage. This is done by finding imputations that will extrapolate the structure of the data, as well as the uncertainty about this structure. A second problem is to use complete-data methods in an efficient way. The HERMES workstation encapsulates existing statistical packages in a client-server model. It forms a natural and convenient environment for implementing multiple imputation
Keywords :
data handling; data structures; database management systems; statistical analysis; systems analysis; HERMES workstation; client-server model; complete-data methods; data structure; incomplete data handling; missing data; multiple imputation; scientific models; statistical analysis; statistical databases; statistical packages; statistically sound technique; uncertainty; Biomedical informatics; Data analysis; Databases; Hospitals; Packaging; Performance analysis; Statistical analysis; Statistics; Uncertainty; Workstations;
Conference_Titel :
Scientific and Statistical Database Management, 1994. Proceedings., Seventh International Working Conference on
Conference_Location :
Charlottesville, VA
Print_ISBN :
0-8186-6610-2
DOI :
10.1109/SSDM.1994.336960