Title of article :
Marginally Specified Generalized Linear Mixed Models: A Robust TApproach
Author/Authors :
Dupuis، D. J. نويسنده , , Field، C. A. نويسنده , , Mills، J. E. نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2002
Pages :
-726
From page :
727
To page :
0
Abstract :
Longitudinal data modeling is complicated by the necessity to deal appropriately with the correlation between observations made on the same individual. Building on an earlier nonrobust version proposed by Heagerty (1999, Biometrics55, 688–698), our robust marginally specified generalized linear mixed model (ROBMS-GLMM) provides an effective method for dealing with such data. This model is one of the first to allow both population–averaged and individual-specific inference. As well, it adopts the flexibility and interpret ability of generalized linear mixed models for introducing dependence but builds a regression structure for the marginal mean, allowing valid application with time-dependent (exogenous) and time-independent covariates. These new estimators are obtained as solutions of a robustified likelihood equation involving Huberʹs least favorable distribution and a collection of weights. Huberʹs least favorable distribution produces estimates that are resistant to certain deviations from the random effects distributional assumptions. Innovative weighting strategies enable the ROBMS-GLMM to perform well when faced with outlying observations both in the response and covariates. We illustrate the methodology with an analysis of a prospective longitudinal study of laryngoscopic endotracheal intubation, a skill that numerous health-care professionals are expected to acquire. The principal goal of our research is to achieve robust inference in longitudinal analyses.
Keywords :
L-GLUMTAMIC ACID , CRYSTALLIZED , EFFECT OF STIRRER MATERIAL , Nucleation , AGITATION RATE , AQUEOUS SOLUTIONS
Journal title :
BIOMETRICS (BIOMETRIC SOCIETY)
Serial Year :
2002
Journal title :
BIOMETRICS (BIOMETRIC SOCIETY)
Record number :
83942
Link To Document :
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