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Deletion diagnostics for alternating logistic regressions
Authors:John S Preisser  Kunthel By  Jamie Perin  Bahjat F Qaqish
Institution:1. Department of Biostatistics, Gillings School of Global Public Health, University of North Carolina, , USA;2. Department of International Health, Johns Hopkins Bloomberg School of Public Health, , USA
Abstract:Deletion diagnostics are introduced for the regression analysis of clustered binary outcomes estimated with alternating logistic regressions, an implementation of generalized estimating equations (GEE) that estimates regression coefficients in a marginal mean model and in a model for the intracluster association given by the log odds ratio. The diagnostics are developed within an estimating equations framework that recasts the estimating functions for association parameters based upon conditional residuals into equivalent functions based upon marginal residuals. Extensions of earlier work on GEE diagnostics follow directly, including computational formulae for one‐step deletion diagnostics that measure the influence of a cluster of observations on the estimated regression parameters and on the overall marginal mean or association model fit. The diagnostic formulae are evaluated with simulations studies and with an application concerning an assessment of factors associated with health maintenance visits in primary care medical practices. The application and the simulations demonstrate that the proposed cluster‐deletion diagnostics for alternating logistic regressions are good approximations of their exact fully iterated counterparts.
Keywords:Clustered data  Generalized estimating equations  Influence  Logistic regression  Orthogonalized residuals
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