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The effects of covariate adjustment in generalized linear models
Authors:Laurence D Robinson  J Robert Dorroh  Donald Lien  Moti L Tiku
Institution:1. Department of Mathematical Sciences , Michigan Technological University , Houghton, MI, 49931;2. Department of Mathematical , Louisiana State University , Baton Rouge, LA, 70803;3. Department of Economics , University of Kansas , Lawrence, KS, 66045;4. Department of Mathematics and Statistics , McMaster University , Hamilton, Ontario, Canada, L8S 4K1
Abstract:Results from classical linear regression regarding the effects of covariate adjustment, with respect to the issues of confounding, the precision with which an exposure effect can be estimated, and the efficiency of hypothesis tests for no treatment effect in randomized experiments, are often assumed to apply more generally to other types of regression models. In this paper results pertaining to several generalized linear models involving a dichotomous response variable are given, demonstrating that with respect to the issues of confounding and precision, for models having a linear or log link function the results of classical linear regression do generally apply, whereas for other models, including those having a logit, probit, log-log, complementary log-log, or generalized logistic link function, the results of classical linear regression do not always apply. It is also shown, however, that for any link function, covariate adjustment results in improved efficiency of hypothesis tests for no treatment effect in randomized experiments, and hence that the classical linear regression results regarding efficiency do apply for all models having a dichotomous response variable.
Keywords:classical linear regression  confounding  dichotomous response  efficiency  precision  randomized experiment
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