Diagnostic Measures for Generalized Linear Models with Missing Covariates |
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Authors: | HONGTU ZHU JOSEPH G. IBRAHIM XIAOYAN SHI |
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Affiliation: | Department of Biostatistics, University of North Carolina at Chapel Hill |
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Abstract: | Abstract. In this paper, we carry out an in-depth investigation of diagnostic measures for assessing the influence of observations and model misspecification in the presence of missing covariate data for generalized linear models. Our diagnostic measures include case-deletion measures and conditional residuals. We use the conditional residuals to construct goodness-of-fit statistics for testing possible misspecifications in model assumptions, including the sampling distribution. We develop specific strategies for incorporating missing data into goodness-of-fit statistics in order to increase the power of detecting model misspecification. A resampling method is proposed to approximate the p -value of the goodness-of-fit statistics. Simulation studies are conducted to evaluate our methods and a real data set is analysed to illustrate the use of our various diagnostic measures. |
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Keywords: | Cook's distance goodness-of-fit missing covariates residuals |
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