z-logo
Premium
Model Selection for Generalized Estimating Equations Accommodating Dropout Missingness
Author(s) -
Shen ChungWei,
Chen YiHau
Publication year - 2012
Publication title -
biometrics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.298
H-Index - 130
eISSN - 1541-0420
pISSN - 0006-341X
DOI - 10.1111/j.1541-0420.2012.01758.x
Subject(s) - missing data , generalized estimating equation , gee , dropout (neural networks) , estimating equations , statistics , outcome (game theory) , mathematics , model selection , marginal model , selection (genetic algorithm) , regression analysis , computer science , econometrics , estimator , artificial intelligence , machine learning , mathematical economics
Summary The generalized estimating equation (GEE) has been a popular tool for marginal regression analysis with longitudinal data, and its extension, the weighted GEE approach, can further accommodate data that are missing at random (MAR). Model selection methodologies for GEE, however, have not been systematically developed to allow for missing data. We propose the missing longitudinal information criterion (MLIC) for selection of the mean model, and the MLIC for correlation (MLICC) for selection of the correlation structure in GEE when the outcome data are subject to dropout/monotone missingness and are MAR. Our simulation results reveal that the MLIC and MLICC are effective for variable selection in the mean model and selecting the correlation structure, respectively. We also demonstrate the remarkable drawbacks of naively treating incomplete data as if they were complete and applying the existing GEE model selection method. The utility of proposed method is further illustrated by two real applications involving missing longitudinal outcome data.

This content is not available in your region!

Continue researching here.

Having issues? You can contact us here