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- Robust Likelihood-based Analysis of Multivariate Data with Missing Values
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- Abstract:
- The model-based approach to inference from multivariate data with missing values is reviewed.
Regression prediction is most useful when the covariates are predictive of the missing values and
the probability of being missing, and in these circumstances predictions are particularly sensitive
to model misspecification. The use of penalized splines of the propensity score is proposed to
yield robust model-based inference under the missing at random (MAR) assumption, assuming
monotone missing data. Simulation comparisons with other methods suggest that the method
works well in a wide range of populations, with little loss of efficiency relative to parametric
models when the latter are correct. Extensions to more general patterns are outlined.
- Subject Area:
- Design of Experiments and Sample Surveys, Statistical Models, Statistical Theory and Methods
- Suggested Citation:
- Rod Little and An Hyonggin,
"Robust Likelihood-based Analysis of Multivariate Data with Missing Values"
(December 2003).
The University of Michigan Department of Biostatistics Working Paper Series.
Working Paper 5.
http://www.bepress.com/umichbiostat/paper5
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July 07, 2003